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Entrepreneurship and Behavioral Strategy
A volume in Research in Behavioral Strategy T. K. Das, Series Editor
RESEARCH IN BEHAVIORAL STRATEGY T. K. Das, Series Editor Published Behavioral Strategy: Emerging Perspectives (2014) Edited by T. K. Das The Practice of Behavioral Strategy (2015) Edited by T. K. Das Decision Making in Behavioral Strategy (2016) Edited by T. K. Das Culture and Behavioral Strategy (2017) Edited by T. K. Das Behavioral Strategy for Competitive Advantage (2018) Edited by T. K. Das Entrepreneurship and Behavioral Strategy (2020) Edited by T. K. Das In Development Innovation and Behavioral Strategy
Entrepreneurship and Behavioral Strategy
edited by
T. K. Das City University of New York
INFORMATION AGE PUBLISHING, INC. Charlotte, NC • www.infoagepub.com
Library of Congress Cataloging-in-Publication Data A CIP record for this book is available from the Library of Congress http://www.loc.gov ISBN: 978-1-64802-048-3 (Paperback) 978-1-64802-049-0 (Hardcover) 978-1-64802-050-6 (E-Book)
Copyright © 2020 Information Age Publishing Inc. All rights reserved. No part of this publication may be reproduced, stored in a retrieval system, or transmitted, in any form or by any means, electronic, mechanical, photocopying, microfilming, recording or otherwise, without written permission from the publisher. Printed in the United States of America
CONTENTS
About the Book Series.......................................................................... vii 1 Entrepreneurial Process Orientation and Multiple Perspectives of Entrepreneurship............................................................................... 1 David F. Jorgensen and Frances Fabian 2 Intersection of Entrepreneurship and Behavioral Strategy: A Literature Review Through Machine Learning............................. 23 Burak Cem Konduk 3 The Temporalities of Entrepreneurial Risk Behavior....................... 57 T. K. Das and Bing-Sheng Teng 4 Entrepreneurs Under Ambiguity: A Prospect Theory Perspective... 89 Corina Paraschiv and Anisa Shyti 5 Dynamic Responses to Disruptive Business Model Innovations: Rational, Behavioral, and Normative Perspectives.......................... 113 Oleksiy Osiyevskyy, Amir Bahman Radnejad, and Kanhaiya Kumar Sinha 6 Behavioral Strategy and International Attention: Theory and Evidence From Dutch Small- and Medium-Sized Enterprises........ 147 Jiasi Fan, Gjalt de Jong, and Hans van Ees
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7 Partnering With Whom and How? Institutional Transition and Entrepreneurial Team Formation in China.............................. 179 Chenjian Zhang and Guido Möllering 8 Building Strategic Alliances in New and Small Ventures: A Review of Literature and Integrative Framework......................... 209 Alice Comi and Martin J. Eppler 9 The Role of Insight in Entrepreneurial Action: A Preliminary Exploration................................................................ 243 Lincoln Brown and Joan L. Brown 10 Exploring the Relationship Between Foreign Competition and Entrepreneurship in a Host Country................................................ 263 Ana Venâncio and Farzana Chowdhury About the Contributors...................................................................... 295 Index................................................................................................... 301
ABOUT THE BOOK SERIES
Behavioral strategy continues to attract increasing research interest within the broader field of strategic management. Research in behavioral strategy has clear scope for development in tandem with such traditional streams of strategy research that involve economics, markets, resources, and technology. The key roles of psychology, organizational behavior, and behavioral decision making in the theory and practice of strategy have yet to be comprehensively grasped. Given that strategic thinking and strategic decision making are importantly concerned with human cognition, human decisions, and human behavior, it makes eminent sense to bring some balance in the strategy field by complementing the extant emphasis on the “objective” economics-based view with substantive attention to the “subjective” individual-oriented perspective. This calls for more focused inquiries into the role and nature of the individual strategy actors, and their cognitions and behaviors, in the strategy research enterprise. For the purposes of this book series, behavioral strategy would be broadly construed as covering all aspects of the role of the strategy maker in the entire strategy field. The scholarship relating to behavioral strategy is widely believed to be dispersed in diverse literatures. These existing contributions that relate to behavioral strategy within the overall field of strategy have been known and perhaps valued by most scholars all along, but were not adequately appreciated or brought together as a coherent sub-field or as a distinct perspective of strategy. This book series on Research in Behavioral Strategy will cover the essential progress made thus far in this admittedly fragmented literature and elaborate upon fruitful streams of scholarship. More importantly, the book series
Entrepreneurship and Behavioral Strategy, pages vii–viii Copyright © 2020 by Information Age Publishing All rights of reproduction in any form reserved.
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will focus on providing a robust and comprehensive forum for the growing scholarship in behavioral strategy. In particular, the volumes in the series will cover new views of interdisciplinary theoretical frameworks and models (dealing with all behavioral aspects), significant practical problems of strategy formulation, implementation, and evaluation, and emerging areas of inquiry. The series will also include comprehensive empirical studies of selected segments of business, economic, industrial, government, and nonprofit activities with potential for wider application of behavioral strategy. Through the ongoing release of focused topical titles, this book series will seek to disseminate theoretical insights and practical management information that will enable interested professionals to gain a rigorous and comprehensive understanding of the subject of behavioral strategy. —T. K. Das City University of New York Series Editor Research in Behavioral Strategy
CHAPTER 1
ENTREPRENEURIAL PROCESS ORIENTATION AND MULTIPLE PERSPECTIVES OF ENTREPRENEURSHIP David F. Jorgensen Frances Fabian
ABSTRACT We propose the new construct of entrepreneurial process orientation (EPO) with the goal of clarifying important entrepreneurial characteristics in relation to key theoretical processes. The EPO has ramifications for improving entrepreneurial training and guiding entrepreneurs to higher success based on pursuing a person-fit alignment between their EPO and the entrepreneurial process that is pursued. We first differentiate the theoretical perspectives of discovery, creation, and effectuation in regard to their implications for different approaches to the entrepreneurial process, which in turn suggest differing optimal behaviors and skill sets. This insight suggests that entrepreneurs may vary in their suitability for pursuing particular types of entrepreneurship. To pursue an initial operationalization of the EPO construct, we propose using configurations of the subscales of the individual entrepre-
Entrepreneurship and Behavioral Strategy, pages 1–21 Copyright © 2020 by Information Age Publishing All rights of reproduction in any form reserved.
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2 D. F. JORGENSEN and F. FABIAN neurial orientation (IEO; innovativeness, proactiveness, and risk-taking) as a proxy for aligning entrepreneurs to train in the dominant behaviors of their optimal theoretical perspective—discovery, creation, and effectuation. Other instruments are suggested for future study and use in building the EPO construct. We conclude with implications for theory, research, and education.
INTRODUCTION In recent years, universities have jumped into the entrepreneurial arena (Singer, 2015; Venkataraman, 2019), in particular because of entrepreneurship’s driving relationship to economic growth (Aghion, 2017). Students are often either barraged by a simplified, single, causal approach to successful startups, or exposed to a panoply of entrepreneurship frameworks. In the former case, their passions and personality may not fit well to the skills of the selected approach, and in the latter, they may find it overwhelming to attempt to master the wide set of skills associated with varied frameworks. To date, there appear to be very few examples of how to customize the entrepreneurship education experience to the bent of the student, both in regard to their interests and their skill sets. The domain of person-environment fit research (Kristof, 1996) encompasses a wide array of perspectives, such as person-vocation and personcareer fit, person-organization fit, person-group fit, and person-supervisor fit—all contained within the larger person-environment (P-E) fit theory (Hsu et al., 2019). Authors have also contended that person-entrepreneurship fit (Markman & Baron, 2003) and perceived person-entrepreneurship fit (Hsu et al., 2019) should also enter the fit sphere. While these additions add important insight to the burgeoning literature predicting entrepreneurial career success, they conceptualize entrepreneurship as a binary fit of entrepreneur/non-entrepreneur. Entrepreneurial research, on the other hand, indicates that entrepreneurship processes (and hence, skill sets) can vary widely based on theoretical perspective; in particular, we focus here on the different interests and skill sets associated with the three theoretical perspectives of discovery, creation, and effectuation. Accordingly, we introduce the new concept of “entrepreneurial process orientation,” or EPO. This orientation view proposes that there exist different kinds of entrepreneurs who will be most successful if they pursue entrepreneurial endeavors in a way consistent with their orientation, that is, have a fit between their personal characteristics and the type of entrepreneurial approach they pursue. We compose these orientations to reflect the three perspectives on venture formation of discovery, creation, and effectuation. While recent research stresses that individual-level characteristics are related to entrepreneurial intentions and success (Zhao, Seibert, & Lumpkin, 2010), the lens presented here reflects that different configurations
Entrepreneurial Process Orientation and Multiple Perspectives of Entrepreneurship 3
of these characteristics are likely to exist and provide some equifinality in success if individuals pursue a corresponding emphasis in their approach to entrepreneurship. By assessing an individual’s entrepreneurial orientation, we can move beyond the dichotomous emphasis on whether an individual is fit to be an entrepreneur at all, towards better understanding and labelling of exactly what type of entrepreneur they may be: for instance, one who discovers opportunities, creates opportunities, or effectuates alongside and in the face of opportunities. Moreover, this conceptualization of an optimal fit offers specificity and direction for would-be entrepreneurs to build the appropriate set of matching competencies. Together, this combines the personality and competency approaches to entrepreneurship roles (Wagener, Gorgievski, & Rijdijk, 2010) by ensuring entrepreneurs have a key insight that will help them move forward in an already-difficult journey; that is, an understanding of how to combine, or fit, facets of their own personality to a corresponding approach to entrepreneurship processes. Hsu et al. (2019) argue that the person-entrepreneurship fit is unknown prior to venture engagement in the entrepreneurship process. However, assessments such as the individual entrepreneurship orientation (IEO) scale developed by Bolton and Lane (2012), could provide insight into an individual’s proclivities prior to engagement in the entrepreneurship process. This scale in particular produces distinguishable factors in innovativeness, proactiveness, and risk-taking, which we argue below may in turn differentially feed into the success of discovery, creation, or effectuation processes in pursuing entrepreneurship. Below we briefly summarize the concept of fit in relation to entrepreneurship, and then follow with a review of the three perspectives of entrepreneurship, with an emphasis on their causal processes associated with success. We follow with theory development on what types of orientations should best work with the approaches associated with the three entrepreneurial perspectives. We conclude in summary that widening our understanding of the potential for entrepreneurial success of a greater variety of individuals, and in turn, designing pedagogies and programs tailored to these differences, are key initiatives for both increasing and improving outcomes in the entrepreneurship sector. THE APPLICATION OF FIT TO ENTREPRENEURSHIP Fit at the individual level (Brigham & Castro, 2003) has been used in many contexts, but has been largely focused on similar, albeit importantly different, phenomena: for example, person-vocation and person-career fit, person-organization fit, person-group fit, and person-supervisor fit (Kristof,
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1996; Kristof-Brown, 2000; Kristof-Brown, Barrick, & Stevens, 2005a; Kristof-Brown, Zimmerman, & Johnson, 2005b; Morley, 2007). A central assumption in this approach is that the success of the studied phenomenon is contingent on a match between personal characteristics and the key environmental constraints and demands within which they work. Fit in Entrepreneurship Markman and Baron (2003) introduced fit to entrepreneurship by creating the “person-entrepreneurship” construct. In this perspective, the entrepreneurship choice is one in which a potential entrepreneur needs to have characteristics that match a singular depiction of the entrepreneurship process, that is, “creating new companies by transforming discoveries into marketable items” (Markman & Baron, 2003, p. 281). Similarly, Hsu et al. (2019) delineated their perspective from person-entrepreneurship fit by introducing the construct of “perceived person-entrepreneurship fit.” In their approach, true person-entrepreneurship fit can only be examined after venture engagement in the entrepreneurship process. In particular, successful entrepreneurship requires that the entrepreneur fits their personal needs with what starting a business offers, irrespective of their level of entrepreneurial self-efficacy (Hsu et al., 2019). While both of these have moved the conversation forward regarding how success in entrepreneurship is contingent on a match between the entrepreneur and a particular constellation of necessary entrepreneurial skill sets, they assume certain dominant views of the entrepreneurship process are universally applicable. Other work has related entrepreneurial success to fit issues with more narrow features of entrepreneurship. For instance, research (Renko & Freeman, 2017) indicates value for a fit between the entrepreneur and the type of opportunity they pursue, such as social versus commercial (Riedo, Kraiczy, & Hack, 2019) or the opportunity’s financial or market realities (Miller, Munoz, & Hurt, 2016; Serviere-Munoz, Hurt, & Miller, 2015). Drawing from a person-organization fit perspective, for instance, growth in small technology firms was found to be spurred by a fit between the founder’s cognitive style (i.e., intuitive decision making) and the formalization of the organization (Brigham, Mitchell, & De Castro, 2010). Finally, some research suggests that oft-lauded entrepreneurial traits are likely to be successful, but contingent on a matching environment: Networking ability positively influences financial performance, but only through mediation by the new venture network size and strength of network relationships, and only for very young startups (Semrau & Sigmund, 2012). In sum, not only is there reason to believe that fit concepts are important to successful venture creation, but that such fit
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parameters may vary based on features of the entrepreneurial process that are necessary for particular types of startup endeavors. Eckhardt and Shane (2003), in their advocacy for opportunities and opportunity recognition as central to entrepreneurship, argued that “the field is better served by studies of the entrepreneurial process itself than studies which focus on normative arguments for the performance of individual entrepreneurs” (2003, p. 345). We agree, with the caveat that the literature has offered very different perspectives on what is involved in the entrepreneurship process based on associated assumptions; here we concentrate on the discovery, creation, and effectuation perspectives. Each approach to the entrepreneurial process signals very different types of personal characteristics that should be successful for launching a venture. Extending ideas from IEO (Kollmann, Christofor, & Kuckertz, 2007), we expand the idea of orientation to encompass a more comprehensive view of entrepreneurship that differs along the three theoretical perspectives, which we refer to as “entrepreneurial process orientations.” With this view, entrepreneurs are not seen as “one size fits all,” but rather that some individuals are likely to succeed within the analytical and strategic skills in the discovery paradigm, while others are more attuned to the creative, out-of-the-box, innovative thinking in the creation paradigm, and equally important, some individuals thrive in social networking and formulation skills necessary for success at effectuation. Specifically, a misfit between a person’s EPO and the process they actually pursue augurs a high likelihood of failure, resonant with the observations made in the entrepreneurial fit literature to date. Importantly though, by recognizing multiple process variations, many more individuals are likely to find paths to success by assuring a match between their orientation and the process they pursue. Perhaps most important of all, if universities hope to nurture the next generation of successful entrepreneurs, they need to recognize the variety of successful paths individuals can take in entrepreneurship, and teach students the requisite skills accordingly. To begin this process, we consider how the characteristics of innovativeness, proactiveness, and risk-taking may be differentially effective for pursuing the associated entrepreneurial process approaches. Individual Entrepreneurial Orientation Researchers have long been interested in understanding what drives certain people to become entrepreneurs, and whether such individuals could be identified ex ante. Robinson, Stimpson, Huefner, and Hunt (1991) drew on social psychology to create the “entrepreneurial attitude orientation” that combined behavior, attitude, and emotion to differentiate entrepreneurs
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from non-entrepreneurs. While a successful predictor for identifying entrepreneurs, it provides very little insight on the match between the entrepreneur and the ensuing processes required for entrepreneurship. Entrepreneurial orientation, on the other hand, is a construct that arose at the firm level and was specifically designed to be matched to patterns of strategies, in particular to new market entry (Covin & Slevin, 1991; Gupta & Gupta, 2015; Lumpkin & Dess, 1996; Wiklund & Shepherd, 2003). Kollman et al. (2007) elaborated a logic for expanding the construct to the individual level, noting that individuals, and not just firms, possess specific qualities which set them apart from others as entrepreneurial. Their original description was concerned with why levels of interest in entrepreneurship tended to vary by country, and thus they sought out cultural antecedents that would predict the five analogs in IEO paralleling the firm-level factors (Lumpkin & Dess, 1996): autonomy, innovativeness, proactiveness, risk-taking, and competitive aggressiveness. Bolton and Lane (2012) in turn developed a popular scale for the study and measurement of IEO. Their empirics for the scale development found three of the five factors were valid and reliable: innovativeness, proactiveness, and risk-taking. Drawing from their source (Rauch, Wiklund, Lumpkin, & Frese, 2009, p. 763), the factors can be described as follows: Innovativeness is defined as “the predisposition to engage in creativity and experimentation through the introduction of new products/ services as well as technological leadership via [research and development] in new processes.” Proactiveness is defined as “an opportunity-seeking, forward-looking perspective characterized by the introduction of new products and services ahead of the competition and acting in anticipation of future demand.” Risk-taking “involves taking bold actions by venturing in to the unknown, borrowing heavily and/or committing significant resources to ventures in uncertain environments.” Conceptually, an entrepreneur should score higher than a non-entrepreneur on all of the three factors of the IEO scale. Yet, little has been expanded upon in regard to whether the three subscales may in turn have optimal configurations for different entrepreneurial processes. In the sections below, we examine the different entrepreneurial perspectives of discovery, creation, and effectuation to develop theory on how they may differ in relation to proactiveness, innovativeness, and risk-taking. Some stipulations should be noted. Entrepreneurial process orientations represent a typology rather than a taxonomy; while there are ideal configural types for the perspectives, it is expected that EPOs can overlap
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across factors. For example, a discovery EPO will require some degree of innovativeness and risk-taking, though it will be argued below that it is primarily driven by proactiveness. In addition, as a typology, no one individual is likely to be a perfect type, rather they are likely instead to favor one type or another. Finally, we note that risk-taking as defined in the subscale differs from “riskiness” as presented by the discovery perspective of entrepreneurship (Alvarez & Barney, 2007) which relates to computing probabilities associated with alternative outcomes. THREE PERSPECTIVES OF ENTREPRENEURSHIP A question central to entrepreneurship is on the origin of new ventures; notably, whether opportunities for venture formation are discovered or created (Alvarez & Barney, 2007; Neill, Metcalf, & York, 2017). The ensuing study of opportunity exploitation on which this debate pivots has been the subject of significant attention (Alvarez, Barney, & Anderson, 2013). Contrasts have been noted to help differentiate the discovery, creation, and effectuation perspectives. Alvarez and Barney (2007) provided a compelling comparison of the discovery and creation perspectives, distinguishing the two in depth. In response to the causal assumptions of the discovery perspective, Sarasvathy (2001) introduced the effectuation perspective as an additional exemplar of the entrepreneurial process. Key to understanding the distinction among these perspectives lies in the answer to the central quandary in entrepreneurship: “How do ventures come to exist?” This line of inquiry and its conflicting approaches are likely to generate fruitful debate for years to come (Alvarez et al., 2013). While no singular perspective can explain every process an entrepreneur may undertake to begin a venture, collectively the three perspectives of discovery, creation, and effectuation cover a broad spectrum of potential approaches. The Discovery Perspective Discovery research has been one of the most widely studied domains of entrepreneurship (Alvarez et al., 2013; Gaglio & Katz, 2001; Shane, 2003; Venkataraman, 1997). Discovery entrepreneurship treats an opportunity as pre-existing in the environment, waiting to be found. Accordingly, these opportunities exist independently of entrepreneurs (Alvarez & Barney, 2007) and will continue existing until they have been found, or the market moves on, leaving them undiscovered. Generally, this assumption has guided research more widely than either the creation or effectuation views, in that
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the existence of opportunities irrespective of entrepreneurs has been taken as given (Alvarez et al., 2013). The discovery entrepreneurship perspective also treats entrepreneurs as a distinct group of individuals who differ from non-entrepreneurs. Moreover, these differences are salient ex ante when operating in an environment that is risky in nature (Alvarez & Barney, 2007). Importantly, as part of the process of planning that the discovery perspective follows, discovery entrepreneurs operate under expectations of attaining specific returns on their investment. Using the discovery perspective, entrepreneurs conduct various analyses that together result in a list of alternatives, all with expected returns. It is the duty of the entrepreneur following the discovery perspective to then choose among those alternatives, typically choosing the alternative with the highest possible return and/or the highest chance of attaining a competitive advantage. Because it is so popular and effective, the causal process underlying the discovery perspective has come to occupy the bulk of educational models in venture formation. Indeed, in most traditional MBA programs (Sarasvathy, 2001) candidates are taught the causal process associated with environmental analysis: that is, discover a need that has been underserved; develop a strategy to capture all possible market share from incumbents; and protect the market from new entrants. In sum, the discovery approach, as a causal method, requires careful planning (Chandler, DeTienne, McKelviec, & Mumford, 2011) and opportunity assessment (Sarasvathy, 2001). Because of its focus on exploiting existing opportunities, entrepreneurs following the discovery perspective must necessarily be trained in methods to perform such an environmental analysis; tools include business plan creation, business canvas maps, and opportunity assessments. Excitingly, prior experience has been shown to increase performance in discovery perspective contexts (Hmieleski, Carr, & Baron, 2015), and presumably through experiential learning methods some effect may be observable after classes at the university level. The proactiveness factor of the IEO scale, with its opportunity-seeking, forward-looking emphasis, lends itself most appropriately to said training within the discovery perspective. The discovery process has been bolstered, though, by other views and methods over the years. In fact, Alvarez et al. (2013) noted that entrepreneurs indeed do more than “just discover” throughout the duration of their venture. For example, methods seen in the past as conflicting may be employed simultaneously (Edelman & Yli-Renko, 2010). Mainela and Puhakka (2009) found, for instance, that because in some cases an opportunity may not have any “rules” in existence for its exploitation, discovery and effectuation must work in tandem. The savvy entrepreneur in such conditions would thus need to exploit while effectuating, effectively creating the rules by which future ventures will join in exploiting the same opportunity.
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The Creation Perspective Creation entrepreneurs are thought to operate differently than discovery entrepreneurs, and are best idealized in the cultural mythos around pioneering genius. World-altering innovative inventions by the Wright brothers, Nikola Tesla, or Thomas Edison epitomize the archetypes of creation entrepreneurship. In recent eras, the disruptive innovations from such creation entrepreneurs less represent the lone engineer and more the rearrangement of long-standing industries with technological advances, such as witnessed in the strategies from companies like Netflix, Airbnb, and Uber (Sarasvathy, Dew, Velamuri, & Venkataraman, 2003). Creation entrepreneurs thus exude innovativeness through creativity and experimentation, as well as through technological leadership (Rauch et al., 2009, p. 763). In fact, the view of an opportunity to a creation entrepreneur includes the creation of both new means as well as new ends (Sarasvathy et al., 2003). As compared to their discovery counterparts, creation entrepreneurs accordingly operate in environments of uncertainty rather than risk (Alvarez & Barney, 2007; Sarasvathy et al., 2003). When a creation entrepreneur creates an opportunity, there is seldom assurance that demand will follow supply. The creation perspective assumes that opportunities do not exist apart from the actions of entrepreneurs (Alvarez & Barney, 2007). Without existing markets to guide investors and customers alike, the best a creation entrepreneur can do is assess past successful innovations such as the explosion of the Internet (Alvarez & Barney, 2007). Therefore, skills of market analysis, internal analysis, innovation, creativity, sales, and bootstrapping would benefit the education of creation entrepreneurs as they seek to realize an idea, obtain necessary financing, and sell the idea to customers. Furthermore, assuring proper fit between creation entrepreneurs and skills needed for creation should enhance the quality and frequency of these innovative, world-altering offerings. Creation entrepreneurs face several unique challenges, among them a lack of legitimacy, the lack of an existing market, skeptical sources of funding, and a general lack of understanding by key stakeholders (Aldrich & Fiol, 1994). Although newer, less studied, and taught with less frequency in our business schools vis-à-vis the discovery perspective, the creation perspective is increasingly recognized as a central process for exploiting technological progress. Indeed, educational attainment has been shown to be a significant predictor of increased venture performance (Hmieleski et al., 2015).
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The Effectuation Perspective Effectuation represents a fairly new perspective for entrepreneurship as a result of the body of work by Sarasvathy (2001). It challenges approaches of the discovery perspective most directly (also referred to as the causation perspective, Sarasvathy, 2001) in particular, by questioning the emphasis on discovery as the sole approach entrepreneurs follow in venture formation. The discovery perspective assumes a desired effect as given, and thus focuses on achieving that effect given a choice among various existing means (Sarasvathy, 2001). Effectuation, on the contrary, assumes a set of means as given (Sarasvathy, 2001), and then focuses on what effects can be reached using those means. As a result, effectual entrepreneurs begin with their means and set a threshold for affordable loss, in contraindication to the discovery perspective’s emphasis on the analysis of expected returns (Fisher, 2012; Sarasvathy, 2001). Accordingly, effectual entrepreneurs can thus fail fast (Chandler et al., 2011; Fisher, 2012) and move from one opportunity to another, attempting to generate opportunities along the way (Sarasvathy, 2003). Similarly to a related entrepreneurial literature on the process of entrepreneurial bricolage (Baker & Nelson, 2005; Fisher, 2012), effectuation stresses improvising with current means and utilizing these means to create a marketable product or service. The effectuation perspective ties itself most closely with the risk-taking perspective of the IEO. While effectuation operates under conditions of uncertainty and not risk (Alvarez & Barney, 2007; Chandler et al., 2011; Fisher, 2012; Sarasvathy, 2001), risk-taking as defined in the IEO differs from the riskiness associated with the discovery perspective. Effectual entrepreneurs embrace this risk-taking in “taking bold actions by venturing in to the unknown, borrowing heavily and or committing significant resources to ventures in uncertain environments” (Rauch et al., 2009, p. 763). While a relatively novel idea in the young field of entrepreneurship, effectuation has met some heavy resistance in its efforts to take its place as a bona fide perspective of entrepreneurship. Critics such as Arend, Sarooghi, and Burkemper (2015) contend that elements of the effectuation perspective have existed for decades, and argue that for the effectuation to progress it must be further distanced from related perspectives, most notably entrepreneurial bricolage (Arend et al., 2015). Fisher (2012), though, has offered persuasive evidence that despite sharing several similarities, effectuation and bricolage are also markedly distinct. Specifically, in relation to approaches to entrepreneurial processes, and here, EPOs, the ramifications of a bricolage perspective can be fruitfully combined with the effectuation perspective due to similarities between the two perspectives. The behaviors that support effectuation appear to be theoretically similar to the skill set required for successful bricolage. For instance, entrepreneurs in both categories begin with a set of means
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and create something new from those means (Fisher, 2012), though the two theories then differ in regard to the role and amount of planning at the outset. The two theories also diverge on the issue of opportunities: Effectual entrepreneurs seek to create or exploit an opportunity given their available alternatives created from their means; bricoleurs ignore the opportunity to instead engage in bricolage—or the act of making do with what is at hand (Fisher, 2012). An effectuation perspective provides an important opportunity to deviate from the more popular discovery perspective, and provides entrepreneurs with a tool to use in new markets rife with uncertainty (Fisher, 2012). Discovery and effectuation are diametrically opposed with regard to uncertainty and in their basic principles (e.g., Alsos, Clausen, & Solvoll, 2014), though both are clearly differentially effective under certain conditions (Sarasvathy et al., 2003). The effectuation and creation perspectives present higher difficulty in terms of separating their similarities to arrive at two distinct processes. Primarily because of their conflation in past literature (e.g., Corner & Ho, 2010; Fisher, 2012; Sarasvathy et al., 2003) the two perspectives have largely been treated the same—indeed, effectuation has been treated as a potential subset of the creation process—though we propose given the above that effectuation can be considered uniquely as its own as a perspective. In particular, while both perspectives share an objective of creating novel products and services, the skills required for effectuation diverge notably from creation. In particular, skills lending themselves more uniquely to effectuation include networking and social skills, as well as risk assessment, so as to apply the effectual boundary of affordable loss. The creation perspective for new ventures assumes no such tasks. The two perspectives do seem to share, though, a need to conduct sound internal analysis to determine available means. While creation and effectuation have been treated as highly similar perspectives, an important distinction can be made when examining assumptions about the initial actions an entrepreneur in each perspective would take. An effectual entrepreneur looks at their means, and from those means, crafts alternatives. They thus begin with the goal of becoming an entrepreneur, and the innovative venture is a key goal. A creation entrepreneur, however, may not even begin as an entrepreneur seeking to create a venture per se, but rather as an individual with an idea that happens to take shape under the right conditions for a business to form around it. This important distinction delineates the creation perspective from both the discovery and effectuation perspectives. In total, the creation entrepreneur explores and innovates, the discovery entrepreneur analyzes, and the effectual entrepreneur assumes risk under affordable loss repeatedly until they succeed. Although varied from the array of perspectives we examine herein (i.e., “allocation” is offered instead of effectuation), when exploring
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allocative, discovery, and creation views of entrepreneurship, Sarasvathy et al. (2003) stated that each perspective “is useful under different circumstances, problem spaces, and decision parameters” (p. 158). We agree, and believe this statement provides an important springboard towards a better understanding of entrepreneurship and better entrepreneurship education. Thus, teaching entrepreneurship students when and how to use each process, and moreover, determining which EPO they most embody, should improve their fit and guide them in appropriate venture creation paths. In light of the above discussion, Table 1.1 offers a summary of how the guiding assumptions, main tenets, important skill sets, pedagogical TABLE 1.1 Entrepreneurial Process Orientation and Guiding Perspective Discovery
Creation
Effectuation
Guiding Assumption
Opportunities exist and await exploitationa, d
Entrepreneurs must create opportunities— opportunities do not exist otherwisea, f
Entrepreneurs begin with existing means and craft from those means an opportunity that may or may not work—the entrepreneur will only know afterwardsb, c
Main Tenets
Causala, b, c, d
Imaginativef and iterativeh
Effectuala, b, c, d, f, g
Important Skill Sets
Environmental analysis, planning,d opportunity assessmentb, c, d
Marketing analysis,a internal analysis, creativity,f imagination,f and innovationa
Internal analysis,b, c, d risk assessment,b, c, d networking,b, c, d, g improvisationb, c, d, f
Pedagogical Implications
Business plan, business canvas map, five forces, value-chain, PESTEL analysis, etc.
Consumer and market analysis,a creativity,f and innovation,a, e sales,a bootstrappinga
Improvisation and remaining flexible,b, c, d networking,b, c, d, g social skills,b, c, d risk assessment,b, c, d affordable lossb, c, d
Behavioral Orientation
Proactivenessa, b, c, d
Innovativenessa, e
Risk-takingb, c, d
Entrepreneurial Process Orientation
Entrepreneurial Process OrientationDiscovery
Entrepreneurial Process OrientationCreation
Entrepreneurial Process OrientationEffectuation
Alvarez & Barney, 2007 Sarasvathy, 2001 c Fisher, 2012 d Chandler et al., 2011 e Hmieleski et al., 2015 f Lachmann, 1986 g Jack & Anderson, 2002 h Smith, Moghaddam, & Lanivich, 2019 a
b
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implications, and IEO factors are theorized to differ across the perspectives. The ensuing differences in the most effective entrepreneurial process approaches for each perspective in turn support the value of a matching process orientation for the entrepreneurs.
INCORPORATING AN ENTREPRENEURIAL PROCESS ORIENTATION INTO UNDERSTANDING PERFORMANCE The introduction of the EPO construct is consistent with fit theory in that it proposes critical dimensions for the person-side of the P-E fit, and stresses the optimal entrepreneurial process approach as the environmental feature that should be accommodated. Research remains nascent, though, on the contingencies that determine which of the three perspectives should dominate in any particular venture startup. Nevertheless, assuming a particular entrepreneurial process approach is advisable, we contend individuals differ in both their interest and skill set to pursue that appropriate entrepreneurial process approach, and research into identifying this EPO will advance both our knowledge and pedagogy. As a first step, we theorize in the section below that IEO configurations may help identify the EPO-Discovery, EPO-Creation, and EPO-Effectuation entrepreneurs. Follow-up research could test whether self-identified EPOs are then associated with higher performance on tasks associated with entrepreneurial orientations. For instance, returning to Table 1.1, we would expect that the subsample highest on proactiveness, associated with an EPO-Discovery designation, would outperform their EPO-Creation and EPO-Effectuation peers in environmental analysis tasks. By grouping entrepreneurs into their EPO (typified here by ratings on the IEO scale), and then fitting them with process tasks associated with their EPO approach, it is expected the matched entrepreneurs would outperform their mismatched peers. Subsequent field research could explore whether eventual venture success positively relates to higher fit entrepreneurs, based on determinations of the optimal processes for a particular startup. Figure 1.1 illustrates our conceptual model. Entrepreneurship is often conceptualized and studied as an individuallevel phenomenon. Aligning our thinking with past important work done on fit at the individual level, we propose management-relevant performance relationships exist from entrepreneurs and the fit they exhibit with their venturing processes. Furthermore, we believe that in aligning cognitive traits (here represented by reference to IEO traits) with the associated
14 D. F. JORGENSEN and F. FABIAN
Entrepreneurial Process Orientation
Proposition 1 Level of Fit
Proposition 2
Entrepreneurial Task Performance
Venture Success
Entrepreneurial Process Tasks
Figure 1.1 Model of entrepreneurial process orientation and entrepreneurial process fit.
entrepreneurial process, greater levels of fit will be achieved. Thus, we posit the following: Proposition 1: Higher fit between EPO and the entrepreneurial process approach tasks will be related to higher success in the tasks. Proposition 1a: EPO-Discovery entrepreneurs will perform better at Discovery approach tasks than EPO-Creation or EPO-Effectuation entrepreneurs. Proposition 1b: EPO-Creation entrepreneurs will perform better at Creation approach tasks than EPO-Discovery or EPO-Effectuation entrepreneurs. Proposition 1c: EPO-Effectuation entrepreneurs will perform better at Effectuation approach tasks than EPO-Creation or EPO-Discovery entrepreneurs. In past empirical work, higher levels of fit have been associated with higher levels of performance (Brigham & De Castro, 2003). Thus, we expect the following: Proposition 2: Level of fit between the EPO and the entrepreneurial process pursued is positively related to entrepreneurial success.
Entrepreneurial Process Orientation and Multiple Perspectives of Entrepreneurship 15
IMPLICATIONS FOR THEORY, RESEARCH, AND EDUCATION In this work we seek to add to the current literature and help resolve the often-heated debate among the competing theoretical perspectives of entrepreneurship in the realm of entrepreneurship education. Entrepreneurship education tends to focus almost exclusively on the discovery perspective, though education utilizing effectuation frameworks and principles is on the rise (Mäkimurto-Koivumaa & Puhakk, 2013). The EPO construct, which we propose here may be proxied by varied configurations of the IEO, should contribute to enlarging our understanding of who can be included in the potential population of entrepreneurs, as well as how entrepreneurs differ from one another. A fully fleshed-out EPO would encompass a range of variables at the individual level, accommodating the fact that entrepreneurs can and do differ from one another. This more comprehensive EPO could expand to include several psychological instruments such as the Myers-Briggs Type Indicator and the NEO Personality Inventory, or test other personal characteristics such as decision making styles. Understanding the characteristics that differentiate entrepreneurs from one another presents a signal opportunity to create more effective educational methods for improving students’ chances at success in becoming entrepreneurial. Below we discuss several implications for theory, research, and education. Implications for Theory The study of entrepreneurship is relatively new in the management literature, and has quickly grown to become a compelling field for inquiry. Venture creation is of substantive importance as a primary instrument of economic growth (Aghion, 2017), and thus studying how entrepreneurship is conducted and how it can be made more successful can serve as a useful driver for increased economic growth. Entrepreneurship research has thus far, though, been primarily dominated by two central theoretical perspectives—discovery and creation. Creation has been conceptualized as incorporating several differing, though similar, methods, including effectuation and bricolage (Baker & Nelson, 2005; Fisher, 2012; Sarasvathy, 2001). We have proposed differentiating effectuation from creation and granting it an equal footing, outlining important differences between the three perspectives in their approach to the entrepreneurial process. In particular, we pointed out that creation and effectuation perspectives are distinguishable and can be differentiated, notably in how an entrepreneur following each perspective would begin the process of venture
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creation. While creation entrepreneurs may not initially view themselves as having any place in entrepreneurship (or for that matter, even business at all), they nevertheless find themselves within those realms when they take their unique idea to market and iteratively try to make it succeed. Effectual entrepreneurs, in contrast, immediately view themselves as entrepreneurs by taking inventory of their available means and crafting from those means a new alternative to take to the market. They leverage their relationships and obtain pre-commitments to increase their chances of success, and apply the affordable loss principle to fail quickly and cheaply (Chandler et al., 2011; Fisher, 2012; Sarasvathy, 2001). Discovery entrepreneurs, in contrast to both creation and effectuation entrepreneurs, plan and choose from among alternatives based on expected return. We have proposed the construct of EPO, and posited that greater fit between EPO and entrepreneurial process tasks leads to greater performance, thereby increasing an entrepreneur’s chance of success. This provides an extension of fit literature, particularly in entrepreneurship, which has largely looked at limited cognitive factors to differentiate entrepreneurs from non-entrepreneurs, as well as some more narrow fit advantages between the entrepreneur and the particular opportunity/venture. The construct of EPO offers new understanding for entrepreneurship theory as it seeks to bring to light the implications of different theoretical perspectives for ensuing approaches to entrepreneurial processes. Implications for Research Research in entrepreneurship has a fruitful future (Alvarez et al., 2013). We add to that growth through presenting a challenge of building the new construct of EPO. We hope a validated and related construct of individual EPO can expand our understanding of different types of entrepreneurs as an initial phase in building the EPO construct. Researchers should be encouraged to use the EPO construct as a foundation for assembling studies that, alongside investigations of the IEO, could incorporate other instruments such as the Myers-Briggs Type Indicator and the NEO Personality Inventory to identify characteristics that predict higher performance in particular types of entrepreneurial tasks. Implications for Education This research is strongly driven by its objective of improving entrepreneurship education. By entrepreneurship’s strong focus on the discovery
Entrepreneurial Process Orientation and Multiple Perspectives of Entrepreneurship 17
perspective of entrepreneurship (Sarasvathy, 2001), it has possibly exacerbated issues of lower venture rates by under-represented groups (Fabian & Ndofor, 2007), and thus can be improved by adding additional theoretical perspectives. We have specifically argued for deeper and more widespread coverage of creation and effectuation processes in the classroom. If fitting EPO with entrepreneurial process tasks serves as a valid predictor of increased success, then at least some entrepreneurs are receiving a vastly incomplete education. By learning to correctly categorize each entrepreneur before they engage in venture creation, we can train them to better implement the necessary tasks, thereby increasing the odds of survival for their ventures. Indeed, as Alvarez et al. (2013) argued, the tool an entrepreneur uses depends on the context they face, which can differ within the same venture over the life of the organization. Thus, entrepreneurs should be educated across different theoretical perspectives to increase their chance at longterm success. CONCLUSION We have proposed the new construct of EPO with the goal of expanding our view of the process of entrepreneurship, providing researchers with a new construct to validate, and improving entrepreneurship education. A key proposition was offered that entrepreneurs differ in their fit with different approaches to the entrepreneurial process, and this has implications for performance and inclusion of different types of entrepreneurs. The theoretical perspectives of discovery, creation, and effectuation were examined in light of possible EPO parameters. To study EPO, we proposed using IEO as a proxy, after which we hope to add to the EPO construct other instruments and facets. We concluded with implications for theory, research, and education. REFERENCES Aghion, P. (2017). Entrepreneurship and growth: Lessons from an intellectual journey. Small Business Economics, 48(1), 9–24. Aldrich, H. E., & Fiol, C. M. (1994). Fools rush in? The institutional context of industry creation. Academy of Management Review, 19(4), 645–670. Alsos, G. A., Clausen, T. H., & Solvoll, S. (2014). Towards a better measurement scale of causation and effectuation. Academy of Management Proceedings, 2014(1), Abstract 13785. Briarcliff Manor, NY: Academy of Management.
18 D. F. JORGENSEN and F. FABIAN Alvarez, S. A., & Barney, J. B. (2007). Discovery and creation: Alternative theories of entrepreneurial action. Strategic Entrepreneurship Journal, 1(1–2), 11–26. Alvarez, S. A., Barney, J. B., & Anderson, P. (2013). Forming and exploiting opportunities: The implications of discovery and creation processes for entrepreneurial and organizational research. Organization Science, 24(1), 301–317. Arend, R. J., Sarooghi, H., & Burkemper, A. (2015). Effectuation as ineffectual? Applying the 3E theory-assessment framework to a proposed new theory of entrepreneurship. Academy of Management Review, 40(4), 630–651. Baker, T., & Nelson, R. E. (2005). Creating something from nothing: Resource construction through entrepreneurial bricolage. Administrative Science Quarterly, 50(3), 329–366. Bolton, D. L., & Lane, M. D. (2012). Individual entrepreneurial orientation: Development of a measurement instrument. Education+Training, 54(2/3), 219–233. Brigham, K. H., & De Castro, J. O. (2003). Entrepreneurial fit: The role of cognitive misfit. In J. A. Katz & D. A. Shepherd (Eds.), Cognitive approaches to entrepreneurship research (pp. 37–71). Bingley, England: Emerald Group. Brigham, K. H., Mitchell, R. K., & De Castro, J. O. (2010). Cognitive misfit and firm growth in technology-oriented SMEs. International Journal of Technology Management, 52(1/2), 4–25. Chandler, G. N., DeTienne, D. R., McKelvie, A., & Mumford, T. V. (2011). Causation and effectuation processes: A validation study. Journal of Business Venturing, 26(3), 375–390. Corner, P. D., & Ho, M. (2010). How opportunities develop in social entrepreneurship. Entrepreneurship Theory and Practice, 34(4), 635–659. Covin, J. G., & Slevin, D. P. (1991). A conceptual model of entrepreneurship as firm behavior. Entrepreneurship Theory and Practice, 16(1), 7–26. Eckhardt, J. T., & Shane, S. A. (2003). Opportunities and entrepreneurship. Journal of Management, 29(3), 333–349. Edelman, L., & Yli–Renko, H. (2010). The impact of environment and entrepreneurial perceptions on venture-creation efforts: Bridging the discovery and creation views of entrepreneurship. Entrepreneurship Theory and Practice, 34(5), 833–856. Fabian, F. H., & Ndofor, H. (2007). The context of entrepreneurial processes: One size doesn’t fit all. In G. T. Lumpkin & J. A. Katz (Eds.), Entrepreneurial strategic processes (pp. 249–279). Oxford, England: Elsevier. Fisher, G. (2012). Effectuation, causation, and bricolage: A behavioral comparison of emerging theories in entrepreneurship research. Entrepreneurship Theory and Practice, 36(5), 1019–1051. Gaglio, C. M., & Katz, J. A. (2001). The psychological basis of opportunity identification: Entrepreneurial alertness. Small Business Economics, 16(2), 95–111. Gupta, V. K., & Gupta, A. (2015). Relationship between entrepreneurial orientation and firm performance in large organizations over time. Journal of International Entrepreneurship, 13(1), 7–27. Hmieleski, K. M., Carr, J. C., & Baron, R. A. (2015). Integrating discovery and creation perspectives of entrepreneurial action: The relative roles of founding
Entrepreneurial Process Orientation and Multiple Perspectives of Entrepreneurship 19 CEO human capital, social capital, and psychological capital in contexts of risk versus uncertainty. Strategic Entrepreneurship Journal, 9(4), 289–312. Hsu, D. K., Burmeister-Lamp, K., Simmons, S. A., Foo, M. D., Hong, M. C., & Pipes, J. D. (2019). “I know I can, but I don’t fit”: Perceived fit, self-efficacy, and entrepreneurial intention. Journal of Business Venturing, 34(2), 311–326. Jack, S. L., & Anderson, A. R. (2002). The effects of embeddedness on the entrepreneurial process. Journal of Business Venturing, 17(5), 467–487. Kollmann, T., Christofor, J., & Kuckertz, A. (2007). Explaining individual entrepreneurial orientation: Conceptualisation of a cross-cultural research framework. International Journal of Entrepreneurship and Small Business, 4(3), 325–340. Kristof, A. L. (1996). Person–organization fit: An integrative review of its conceptualizations, measurement, and implications. Personnel Psychology, 49(1), 1–49. Kristof-Brown, A. L. (2000). Perceived applicant fit: distinguishing between recruiters’ perceptions of person–job and person–organization fit. Personnel Psychology, 53(3), 643–671. Kristof-Brown, A. L., Barrick, M. R., & Stevens, C. K. (2005a). When opposites attract: A multi-sample demonstration of complementary person-team fit on extraversion. Journal of Personality, 73(4), 935–958. Kristof-Brown, A. L., Zimmerman, R. D., & Johnson, E. C. (2005b). Consequences of individuals’ fit at work: A meta-analysis of person-job, person-organization, person group, and person-supervisor fit. Personnel Psychology, 58(2), 281–342. Lachmann, L. M. (1986). The market as an economic process. Oxford, England: Wiley-Blackwell. Lumpkin, G. T., & Dess, G. G. (1996). Clarifying the entrepreneurial orientation construct and linking it to performance. Academy of Management Review, 21(1), 135–172. Mainela, T., & Puhakka, V. (2009). Organizing new business in a turbulent context: Opportunity discovery and effectuation for IJV development in transition markets. Journal of International Entrepreneurship, 7(2), 111–134. Mäkimurto-Koivumaa, S., & Puhakka, V. (2013). Effectuation and causation in entrepreneurship education. International Journal of Entrepreneurial Venturing, 5(1), 68–83. Markman, G. D., & Baron, R. A. (2003). Person–entrepreneurship fit: Why some people are more successful as entrepreneurs than others. Human Resource Management Review, 13(2), 281–301. Miller, R. J., Munoz, L., & Hurt, K. J. (2016). Complex start-ups: A thematic analysis in entrepreneur-opportunity fit concept. Journal of Business & Entrepreneurship, 28(1), 1–29. Morley, M. J. (2007). Person-organization fit. Journal of Managerial Psychology, 22(2), 109–117. Neill, S., Metcalf, L. E., & York, J. L. (2017). Distinguishing entrepreneurial approaches to opportunity perception. International Journal of Entrepreneurial Behavior & Research, 23(2), 296–316. Rauch, A., Wiklund, J., Lumpkin, G. T., & Frese, M. (2009). Entrepreneurial orientation and business performance: An assessment of past research and suggestions for the future. Entrepreneurship Theory and Practice, 33(3), 761–787.
20 D. F. JORGENSEN and F. FABIAN Renko, M., & Freeman, M. J. (2017). How motivation matters: Conceptual alignment of individual and opportunity as a predictor of starting up. Journal of Business Venturing Insights, 8(C), 56–63. Riedo, V., Kraiczy, N. D., & Hack, A. (2019). Applying person–environment fit theory to identify personality differences between prospective social and commercial entrepreneurs: An explorative study. Journal of Small Business Management, 57(3), 989–1007. Robinson, P. B., Stimpson, D., Huefner, J., & Hunt, H. (1991). An attitude approach to the prediction of entrepreneurship. Entrepreneurship Theory and Practice, 15(4), 13–31. Sarasvathy, S. D. (2001). Causation and effectuation: Toward a theoretical shift from economic inevitability to entrepreneurial contingency. Academy of Management Review, 26(2), 243–263. Sarasvathy, S. D. (2003). Entrepreneurship as a science of the artificial. Journal of Economic Psychology, 24(2), 203–220. Sarasvathy, S. D., Dew, N., Velamuri, S. R., & Venkataraman, S. (2003). Three views of entrepreneurial opportunity. In Z. J. Acs, & D. B. Audretsch (Eds.), Handbook of entrepreneurship research (pp. 141–160). New York, NY: Springer. Semrau, T., & Sigmund, S. (2012). Networking ability and the financial performance of new ventures: A mediation analysis among younger and more mature firms. Strategic Entrepreneurship Journal, 6(4), 335–354. Serviere-Munoz, L., Hurt, K. J., & Miller, R. (2015). Revising the entrepreneur opportunity fit model: Addressing the moderating role of cultural fit and prior start-up experience. Journal of Business and Entrepreneurship, 27(1), 59–80. Shane, S. A. (2003). A general theory of entrepreneurship: The individual-opportunity nexus. Northampton, MA: Edward Elgar. Singer, N. (2015, December 28). Universities race to nurture start-up founders of the future. New York Times. Retrieved from https://www.nytimes.com/2015/ 12/29/technology/universities-race-to-nurture-start-up-founders-of-the -future.html Smith, A. W., Moghaddam, K., & Lanivich, S. E. (2019). A set-theoretic investigation into the origins of creation and discovery opportunities. Strategic Entrepreneurship Journal, 13(1), 75–92. Venkataraman, S. (1997). The distinctive domain of entrepreneurship research: An editor’s perspective. In J. Katz & R. Brockhaus (Eds.), Advances in entrepreneurship, firm emergence and growth (pp. 119–138). Greenwich, CT: JAI Press. Venkataraman, S. (2019). The distinctive domain of entrepreneurship research. In J. A. Katz & A. C. Corbet (Eds.), Seminal ideas for the next twenty-five years of advances (pp. 5–20). Bingley, England: Emerald. Wagener, S., Gordievsky, M., & Rijsdijk, S. (2010). Businessman or host? Individual differences between entrepreneurs and small business owners in the hospitality industry. Service Industries Journal, 30(9), 1513–1527. Wiklund, J., & Shepherd, D. (2003). Knowledge-based resources, entrepreneurial orientation, and the performance of small- and medium-sized businesses. Strategic Management Journal, 24(13), 1307–1314.
Entrepreneurial Process Orientation and Multiple Perspectives of Entrepreneurship 21 Zhao, H., Seibert, S. E., & Lumpkin, G. T. (2010). The relationship of personality to entrepreneurial intentions and performance: A meta-analytic review. Journal of Management, 36(2), 381–404.
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CHAPTER 2
INTERSECTION OF ENTREPRENEURSHIP AND BEHAVIORAL STRATEGY A Literature Review Through Machine Learning Burak Cem Konduk
ABSTRACT This study examined the role of behavioral strategy in the entrepreneurship literature. To this end, it carried out a non-traditional literature review that analyzed a sample of articles published in the top three journals dedicated to entrepreneurship through unsupervised machine learning. Specifically, several machine-learning algorithms found out entrepreneurship literature’s topics, clusters, and most frequently used terms, laying out the boundaries and terrain of the field. Most frequently used terms and their linkages showed that behavioral strategy influences the entrepreneurship literature through its behavioral or strategic roots but not both. This observation, in turn, suggested that behavioral strategy can enlarge its role in the entrepreneurship literature by coupling its otherwise decoupled roots. Additional analyses searched for
Entrepreneurship and Behavioral Strategy, pages 23–55 Copyright © 2020 by Information Age Publishing All rights of reproduction in any form reserved.
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24 B. C. KONDUK areas of the entrepreneurship literature where such coupling can take place. Findings indicated that researchers can combine behavioral and strategic roots of behavioral strategy in areas of the entrepreneurship literature that concern resources, decision-making, opportunity, performance, innovation, entrepreneurs, strategy, process, legitimacy, risk propensity, teams, learning, and effectuation.
INTRODUCTION “Entrepreneurship is a process” (McMullen & Dimov, 2013, p. 1481). Although there are various accounts of this process (Moroz & Hindle, 2012), its crux consists of two main stages. In the first stage, entrepreneurs recognize, create, or discover an opportunity that can potentially generate a profit because of their prior knowledge, alertness, or external changes in the general, industry, and task environment (McCaffrey, 2014; Shane, 2000; Valliere, 2013). In the second stage, they develop or exploit (McMullen & Shepherd, 2006) the recognized opportunity by founding specific types of firms (Sarasvathy, 2004). The behavioral strategy that “merges cognitive and social psychology with strategic management theory and practice” (Powell, Lovallo, & Fox, 2011, p. 1369) is relevant to this entrepreneurial process. The first stage of the entrepreneurial process concerns how entrepreneurs search for, represent, store, retrieve, combine, compare, process, and utilize information (Grégoire, Barr, & Shepherd, 2010) to recognize, create, or discover an opportunity under various emotional states (Cardon, Foo, Shepherd, & Wiklund, 2012). All of this calls for viable and realistic assumptions about human cognition and emotion. Behavioral strategy can provide these types of assumptions, which, for example, can acknowledge rather than rule out cognitive biases (Das & Teng, 1999). Behavioral strategy can also explain how entrepreneurs take advantage of an opportunity by drawing on strategic management literature’s theories about value creation, value capture, and competitive advantage (Coff, 2010; Newbert, 2008). For example, strategic factor markets theory (Barney, 1986) can explain why and when some entrepreneurs capture value from resources that others discount and overlook. Despite the relevance of behavioral strategy to entrepreneurship and its constituent stages, there has not been a systematic and comprehensive examination of the role and nature of behavioral strategy in the field of entrepreneurship. For example, searching for “behavioral strategy” and “entrepreneurship” in the abstracts of peer-reviewed journals from ABI/ INFORM Collection retrieves merely 24 articles that include terms such as “behaviors,” “behavioral,” or “strategy” rather than the concept of “behavioral strategy” (Levinthal, 2011; Powell et al., 2011).
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This chapter addresses this gap in our understanding by reviewing the role of behavioral strategy in the entrepreneurship literature through unsupervised machine learning algorithms such as cluster analysis and topic modeling. The next section discusses the purpose of the study. The following sections discuss the sample and method and the findings of different analyses. PURPOSE OF THE STUDY This chapter explores the role of behavioral strategy in the field of entrepreneurship through a non-traditional literature review that is broader and deeper than traditional reviews. Specifically, it examines a sample of articles published in the top three entrepreneurship journals through unsupervised machine learning methods. These methods document the terms that the entrepreneurship literature uses and count their frequencies, capturing the terms’ relative popularity and pervasiveness. They also find out whether there is a direct or indirect association between these literature terms and calculate the strength of existing and available associations. Finding out the existence and strength of linkages between concepts captures the mind map of the researchers who have researched in the field of entrepreneurship over several decades. The findings of these methods also produce insights for the extent of the overlap between strategy and entrepreneurship literatures, in general, and between behavioral strategy and entrepreneurship literatures, in particular. Overall, they suggest that entrepreneurship and strategy literatures use common terms, concepts, and theories. Despite this overall overlap between entrepreneurship and strategy, results also show that the role of behavioral strategy in the entrepreneurship literature is limited to its either behavioral or strategic roots. More specifically, findings show that behavioral strategy’s roots in cognitive and social psychology, on the one hand, and strategic management, on the other hand, have independently interacted with the field of entrepreneurship. This result, in turn, shows that the entrepreneurship literature has been hesitant to combine these roots, a combination that is the essence of behavioral strategy. The limited impact of behavioral strategy on the field of entrepreneurship, however, is a blessing in disguise. It endows behavioral strategy with an upside potential to influence the field of entrepreneurship. In particular, analyses point out that behavioral strategy as a field is directly relevant to 7 of the 14 identified clusters of studies in the entrepreneurship literature. Specifically, results show that behavioral strategy can play a role in clusters of studies about resources, decision making, opportunity, performance, innovation, entrepreneurs, and strategic aspects of entrepreneurship. Findings also show that behavioral strategy can enrich and guide topics like entrepreneurial
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process, institutional legitimacy, risk propensity, teams, entrepreneurial learning, and effectuation from the entrepreneurship literature. In addition to improving our understanding of the role of behavioral strategy in the entrepreneurship literature, the discovered clusters and topics provide a snapshot of the state of the entrepreneurship field. This snapshot captures the relative importance of each cluster and topic through their size, showing the overall trends in the entrepreneurship literature. It also identifies not only the boundaries of the field but also potential gaps in the conceptual and theoretical space of the entrepreneurship literature. These boundaries and gaps, in turn, identify new topics, issue alerts about potential problems and limitations, and flag new research directions. METHODOLOGY Sample The top three entrepreneurship journals constitute the sample. The titles of these journals are Entrepreneurship Theory and Practice, Journal of Business Venturing, and Strategic Entrepreneurship Journal. These journals adequately represent the scholarly work in the field of entrepreneurship due to their high impact and prestige. Acknowledging the high impact of these journals, the final Financial Times top 50 journals list (Financial Times, 2019), which is valid from 2017 and onwards, points out these journals as the top three entrepreneurship journals. Similar to the list of Financial Times, journal rankings of Scimago Journal & Country Rank place Journal of Business Venturing, Entrepreneurship Theory and Practice, and Strategic Entrepreneurship Journal in the 25th, 36th, and 59th positions, respectively, in all subject categories of business, management, and accounting (Scimago Journal & Country Rank, 2019). The absence of any other entrepreneurship journals in one of these top 59 positions once more demonstrates that the sampled journals are the most impactful journals dedicated to the field of entrepreneurship. Some of the issues of these sampled journals were not available due to licensing restrictions. Thus, this review examined 1,012 articles published between 1985 and 2014 in Journal Business Venturing, 758 articles published in Entrepreneurship Theory and Practice between 2000 and 2016 (including the second issue), and 271 articles published between 2007 and 2019 in Strategic Entrepreneurship Journal, resulting in a total of 2,041 published manuscripts. Some of these manuscripts were not suitable for further analysis because databases contained their scanned pictures. These pictures were not machine-readable. Optical character recognition aimed to solve this
Intersection of Entrepreneurship and Behavioral Strategy 27
problem. It was able to turn all but 12 of these scanned images into machine-encoded text for subsequent analysis. Thus, the final sample contained 2,029 manuscripts. Method Recent empirical work quantifies unstructured text data to generate insights given their importance, abundance, and richness (Gentzkow, Kelly, & Taddy, 2017). For example, researchers analyzed and quantified text to forecast stock market returns (Chen, De, Hu, & Hwang, 2014) and sales (Chevalier & Mayzlin, 2006). Also, scholars applied quantitative text analysis to the analysis of company web sites (Thorleuchter & Van Den Poel, 2012), financial statements (Loughran & McDonald, 2016), and online customer reviews (Yin, Mitra, & Zhang, 2016). Despite the growth of the quantitative text analysis and its direct applicability to literature reviews, literature reviews in the field of management have not benefitted from this state-of-the-art method. By addressing this limitation, this study mined the text of sampled journals through unsupervised machine learning (Hofmann, 2001) and explored the intersection of entrepreneurship and behavioral strategy. This study treats text as data (Gentzkow et al., 2017). Thus, it parsed and then filtered the sampled documents (Chakraborty, Pagolu, & Garla, 2013) to quantify the text embedded in them. The process of parsing broke down the sampled text into tokens, which are meaningful units for analysis such as words (Silge & Robinson, 2017), and then kept only those tokens that are useful for further analysis. The parsing process of this study removed or ignored punctuation, numeric expressions, abbreviations, low information terms (i.e., “a,” “an,” “as,” and “by”) and certain parts of a speech (i.e., auxiliary, conjunction, determiner, interjection, infinite market, negative participle, possessive marker, preposition, pronoun, and prefix) that just introduce noise and thereby do not create value for exploratory and descriptive analysis. Parsing also reduced related words (i.e., tasted and tasteful) to their stems (i.e., taste), grouped families of tokens with similar meanings (i.e., synonyms), and recognized different parts of speech, noun groups, and entities. The outcome of the parsing process was the production of a document-by-term matrix whose elements are the frequencies of derived tokens or terms. Thus, this matrix numerically represented text data and the corpus of terms. This study then filtered the resulting document-by-term-matrix to resolve its high dimensionality and sparseness (Chakraborty et al., 2013). Despite
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its efforts to do otherwise, the process of parsing, in general, produces too many terms that belong to a handful of documents and a handful of terms that belong to too many documents. This skewness, in turn, not only adds too many columns to the matrix, producing high dimensionality, but also produces too many columns with zero frequencies, producing sparseness. Filtering solved the high dimensionality and sparseness of the document-by-term-matrix through singular value decomposition. Specifically, it projected this matrix into a lower-dimensional space through singular value decomposition (SVD) without any weight. This study chose not to weigh the matrix, for example with the product of log frequency, a local weight, and entropy, a global weight, at the expense of increased computation time and resource requirements of subsequent analyses (Chakraborty et al., 2013). The reason for this was that the unweighted document-by-term matrix was an objective representation of the state of the field. Filtering produced a list of spell-checked tokens. This list included both kept and dropped tokens. Additional analysis of rejected and accepted tokens investigated whether filtering kept (dropped) tokens that were relevant (irrelevant) to this study. This analysis added back relevant but initially dropped tokens but dropped irrelevant but initially included tokens. The subsequent analyses used only the kept tokens that appeared in at least 30 documents. All of these steps produced the text data for unsupervised learning. Unsupervised learning, in general, does not require a model and a target variable because this type of learning aims pattern discovery and information retrieval rather than prediction. This study used two unsupervised learning models, which are cluster analysis and topic modeling (Liu, Tang, Dong, Yao, & Zhou, 2016), to analyze unstructured text data from the sampled journals with SAS Text Miner, which is a component of SAS Enterprise Miner. Cluster analysis, in general, aims to associate every document with only one cluster via different algorithm options such as expectation-maximization or hierarchical. By not expecting a hierarchical relationship between terms, this study used the expectation-maximization algorithm that iterates between an expectation step that calculates cluster centers and a maximization step that assigns documents to the closest clusters until there is no improvement (Chakraborty et al., 2013). By using this algorithm, the cluster analysis assigned the sampled documents to naturally occurring, mutually exclusive, and exhaustive clusters (James, Witten, Hastie, & Tibshirani, 2013) and identified 50 keywords that had the closest association with each cluster (SAS Institute Inc., 2017). Cluster analysis, in general, can produce different numbers of clusters. The exploratory nature of this study prevented pre-specification of the exact number of clusters. Thus, the analysis initially limited the maximum number of clusters to the default value of 40 and then examined the number
Intersection of Entrepreneurship and Behavioral Strategy 29
of clusters that expectation-maximization algorithm produced for a various number of SVD dimensions under the default low resolution of SAS Text Miner (SAS Institute Inc., 2017). The examination of these clusters, their members, and associated keywords guided the selection of the number of clusters that eventually analyzed the text data. The second unsupervised learning model, which is topic modeling (Liu et al., 2016), extracted topics from the sampled documents. To this end, it detected either direct co-occurrence of words in a document or indirect cooccurrence of words across documents through their shared linkage with a third word. Unlike cluster analysis that limited the association of a given document to only one cluster, topic modeling accounted for the possibility that a document could contain more than one topic. Topic modeling also found out the keywords that had the most substantial connection with a particular topic and ranked the documents in terms of the strength of their association with a particular topic (SAS Institute Inc., 2017). Although it is possible to extract orthogonal or correlated topics, this study preferred correlated topics to orthogonal topics for two reasons. First, correlated topics improve the alignment between keywords and topics (SAS Institute Inc., 2017), facilitating better interpretation of topic content. Second, there is an association among the topics of the entrepreneurship literature because this literature looks at different components and elements of the very same process (McMullen & Dimov, 2013). Since it was difficult to know the appropriate number of topics in advance, this study modeled a different number of topics and then selected the model with the highest number of topics that did not overlap with one another. Such an approach neither conflated distinct topics nor broke up the same topics, increasing their precision and coverage of the entrepreneurship literature. In addition to cluster analysis and topic modeling, concept links captured the associations between identified terms and the strength of those associations with a hyperbolic tree. Concept links, in general, can capture direct and indirect associations at various levels as the depth of the tree can extend. Thus, they were useful to understand the strength of the relationships between terms that were critical to this study (Chakraborty et al., 2013). RESULTS The analyses produced a term list from the studied documents. Table 2.1 contains the top 50 terms or concepts. These terms are rank ordered by the number of documents that contain them. This table shows that the term “process” appears in the highest number of documents. This finding is consistent with the conceptualization of entrepreneurship as a process
30 B. C. KONDUK TABLE 2.1 Top 50 Literature Terms Ranking
Frequency
Number of Documents
1
process
Term
26,760
1,859
2
opportunity
30,789
1,782
3
strategy
22,697
1,779
4
resource
33,491
1,761
5
issue
10,376
1,756
6
decision
21,757
1,756
7
strategic
30,433
1,687
8
performance
33,109
1,664
9
information
18,117
1,646
10
social
36,129
1,605
11
individual
18,841
1,601
12
group
12,796
1,600
13
product
22,903
1,587
14
capital
26,474
1,574
15
knowledge
24,701
1,570
16
experience
18,113
1,565
17
risk
13,585
1,521
18
financial
12,483
1,519
19
innovation
17,445
1,411
20
technology
15,199
1,401
21
advantage
7,281
1,378
22
attention
4,415
1,366
23
investment
18,683
1,349
24
recognize
4,120
1,294
25
competitive
7,801
1,286
26
policy
6,711
1,226
27
network (noun)
18,940
1,199
28
new venture
10,997
1,178
29
motivation
5,991
1,139
30
capability
9,924
1,114
31
uncertainty
7,558
1,082
32
survival
5,064
1,074
33
asset
6,420
1,012
34
competition
3,760
993
35
learning
8,576
962
36
institutional
9,646
952 (continued)
Intersection of Entrepreneurship and Behavioral Strategy 31 TABLE 2.1 Top 50 Literature Terms (Continued) Ranking
Term
37
innovative
38
investor
39
environmental
40
Frequency
Number of Documents
4,106
924
11,908
887
5,274
881
capacity
3,557
879
41
evolution
2,415
868
42
institution
5,542
861
43
cognitive
7,383
840
44
behavioral
2,737
791
45
cultural
3,738
783
46
equity
6,512
779
47
leadership
3,072
758
48
location
3,418
755
49
psychology
3,098
742
50
expertise
2,618
734
(McMullen & Dimov, 2013). Zooming in on this term to find its relationships and place in the literature through a conceptual link shows that the terms “cognition,” “cognitive,” “behavioral,” “decision making,” “knowledge,” “entrepreneurial process,” “entrepreneurial opportunity,” and “exploitation” have the closest linkages. For example, approximately 98% of the documents that contain the term “cognitive” or “behavioral” or “exploitation” or “decision making” also contain the term “process.” Similarly, approximately 99% of the documents that contain the term “entrepreneurial opportunity” or “cognition” also include the term “process.” The strong and direct relationship between “entrepreneurial opportunity” and “process,” on the one hand, and between “exploitation” and “process,” on the other hand, lends credence to the aforementioned view that the process of entrepreneurship contains opportunity recognition and exploitation stages. Another takeaway from Table 2.1 is the overlap between strategy and entrepreneurship literatures. Among the 2,029 studied manuscripts, 1,779 documents use the term “strategy,” and 1,687 documents use the term “strategic.” Table 2.1 also shows that the entrepreneurship literature frequently refers to core strategy terms like “resource,” “asset,” “capability,” “performance,” “competitive,” “competition,” “information,” “experience,” “knowledge,” “learning,” “innovation,” “risk,” “institutional,” “evolution,” “environmental,” “policy,” and “network.” The high overlap between these two fields is not surprising and comes from both the work of eminent strategy scholars in the field of entrepreneurship (Venkataraman,
32 B. C. KONDUK
1997) and this field’s frequent citation of strategy scholars (Ferreira, Reis, & Miranda, 2015). The high overlap between the strategy and entrepreneurship literatures also implies an overlap between behavioral strategy and entrepreneurship as the behavioral strategy is a branch of the strategy literature. Table 2.2 shows the extent of the overlap between behavioral strategy and entrepreneurship as it contains the terms that are relevant to behavioral strategy but extracted from the sampled entrepreneurship literature. For example, Table 2.2 makes repeated references to cognition that is central to behavioral strategy. TABLE 2.2 The Overlapping Literature Terms Between Behavioral Strategy and Entrepreneurship Ranking
Frequency
Number of Documents
1
Term cognitive
7,383
840
2
behavioral
2,737
791
3
psychology
3,098
742
4
affect (noun)
2,929
717
5
bias
1,360
639
6
decision making
2,082
629
7
personality
2,059
550
8
cognition
3,208
481
9
mental
1,349
479
10
judgement
1,780
453
11
emotional
1,874
377
12
heuristics
1,325
282
13
personality
773
282
14
intuition
1,088
221
15
emotion
2,258
221
16
memory
935
218
17
affective
1,516
214
18
mindset
599
202
19
intuitive
478
188
20
tacit knowledge
482
182
21
cognitive process
378
177
22
social psychology
218
152
23
decision-making process
225
149
24
schema
843
146
25
decision process
338
145 (continued)
Intersection of Entrepreneurship and Behavioral Strategy 33 TABLE 2.2 The Overlapping Literature Terms Between Behavioral Strategy and Entrepreneurship (Continued) Ranking
Frequency
Number of Documents
26
Term strategic decision making
165
136
27
strategic orientation
407
135
28
venture strategy
292
135
29
cognitive perspective
228
131
30
personality trait
329
130
31
behavioral research
138
128
32
analogy
324
127
33
individual characteristic
199
121
34
heuristic
513
120
35
social construction
183
120
36
cognition
255
115
37
cognitive bias
326
112
38
overconfidence
590
108
39
sensemaking
354
99
40
psychological characteristic
144
97
41
cognitive factor
147
95
42
cognitive mechanism
126
90
43
behavioral theory
159
84
44
mental model
272
83
45
psychological
91
75
46
counterfactual
530
75
47
social cognition
136
72
48
cognitive theory
100
71
49
cognizant
77
68
50
cognition research
162
67
51
positive affect
555
63
52
personality characteristic
112
62
53
cognitive psychology
106
60
54
hubris
172
58
55
entrepreneurial perception
81
58
56
counterfactual thinking
288
58
57
bounded rationality
123
58
58
cognitive structure
106
56
59
cognitive approach
75
56
60
perceptual measure
78
55 (continued)
34 B. C. KONDUK TABLE 2.2 The Overlapping Literature Terms Between Behavioral Strategy and Entrepreneurship (Continued) Ranking
Term
Frequency
Number of Documents
61
psychological basis
57
54
62
cognitive ability
63
stereotype
74
54
185
64
overconfident
178
54 54
65
cross cultural cognition
53
53
66
behavioral science
54
52
67
cognitive science
113
51
68
social cognitive theory
106
51
69
anger
207
49
70
pessimistic
80
49
71
fast strategic decision
46
46
72
psychology literature
59
46
73
negative emotion
360
46
74
groupthink
75
46
75
cognitive style
211
45
76
achievement motivation
102
44
77
reference point
78
intrinsic motivation
79
mindful
80
sensemaking
81
growth aspiration
82
positive emotion
204
40
83
cognitive resource
132
40
84
survivor bias
48
39
85
organizational psychology
46
39
86
reference group
47
38
87
prospect theory
106
38
88
unlearn
81
37
89
cognitive dimension
119
37
90
cognitive framework
58
36
91
decision making process
42
36
92
decision theory
68
35
93
feeling
57
35
94
behavioral model
43
35
95
managerial decision
43
34
91
43
184
43
57
41
65
41
212
41
(continued)
Intersection of Entrepreneurship and Behavioral Strategy 35 TABLE 2.2 The Overlapping Literature Terms Between Behavioral Strategy and Entrepreneurship (Continued) Ranking
Term
Frequency
Number of Documents
96
psychological trait
53
34
97
systematic bias
37
33
98
strategic thinking
42
32
99
management decision
43
32
100
hubris theory
42
32
101
social cognitive perspective
30
30
102
affective state
95
30
103
cognition-base
39
30
104
psychological theory
37
30
Specifically, it contains terms like “heuristics,” “schema,” “memory,” “intuition,” and different types of “biases” like “overconfidence,” “hubris,” and “survivor bias.” Table 2.2 also refers to “affect” and “emotion,” which are either negative or positive, disciplines like “psychology,” and theories like “prospect theory” or “social cognitive theory” that behavioral strategy draws on. More to the point, Table 2.2 contains vital terms from behavioral strategy like “sense-making,” “bounded rationality,” “reference point,” and “reference group.” Table 2.2 also shows that the entrepreneurship literature directly uses the term “behavioral” as an adjective in 791 documents, corresponding to approximately 39% of studied documents. This term is actually one of the top 50 terms that the entrepreneurship literature uses according to Table 2.1. The entrepreneurship literature also deploys this term as a component of a noun group. For example, while 128 documents use the term “behavioral research,” 35 documents refer to “behavioral model” according to Table 2.2. Similarly, 84 studies contain the term “behavioral theory.” Evidence also shows that the entrepreneurship literature, like the behavioral strategy literature, associates cognition and social psychology with the umbrella term “behavioral.” For example, 73% of the sampled documents that refer to social psychology also refers to the term “behavioral” in the entrepreneurship literature. Likewise, 68% of the documents that discuss cognition also use the term “behavioral.” The allusion of the entrepreneurship literature to the behavioral strategy terms and its extensive usage of the term “behavioral” either as an adjective or as a component of a noun group show that there is a role for behavioral strategy to play in the entrepreneurship literature. However, this role has been somewhat limited and partial because behavioral strategy’s distinct roots in cognitive and social psychology, and strategic management
36 B. C. KONDUK
rather than the integration of these roots, which is the essence of behavioral strategy, influence the entrepreneurship literature. Specifically, unlike behavioral strategy, the field of entrepreneurship does not connect cognitive or social psychology with “strategic management theory and practice” (Powell et al., 2011, p. 1369) according to concept links. For example, the analysis showed that cognition is highly associated with venture creation, schema, nascent entrepreneur, psychology, and opportunity discovery in the entrepreneurship literature. Also, social psychology is strongly connected with self-efficacy, affect, cognition, psychology, and personality in the field of entrepreneurship. Nevertheless, neither of these terms has a strong linkage with theories and practice from strategic management. The entrepreneurship literature thereby fails to link strategic management practice and theories with cognitive and social psychology, a link that is the essence of behavioral strategy. Examining this issue from the other side of the same coin leads to the same conclusion. Specifically, data show that strategic management concepts and theories diffuse into the entrepreneurship literature but without links to cognitive and social psychology. For example, examination of the linkages of the term “strategy” with other terms shows that this term is strongly associated with terms like “environmental,” “business strategy,” “resource-base,” “capability,” “competitive advantage,” “competitor,” “competitive,” or “strategic” in the entrepreneurship literature. The terms that connect to “strategy,” however, do not directly connect to cognitive and social psychology or any related terms. The lack of such connection shows that although the entrepreneurship literature borrows terms and concepts from the strategy literature, it does not take the additional step of merging them with cognitive and social psychology to study issues relevant to entrepreneurship. All of this suggests that entrepreneurship literature uses concepts and ideas from strategic management and cognitive and social psychology. However, it does not combine them. This lack of combination, in turn, limits the role of behavioral strategy in the entrepreneurship literature to its either behavioral or strategic roots. Behavioral strategy, however, can make a significant contribution to the entrepreneurship literature as this literature contains its ingredients. Further analyses aimed to find out and specify the extent of such potential contribution. To this end, cluster analysis and topic modeling produced detailed maps of the entrepreneurship literature for the behavioral strategy to find its way into this literature. Specifically, these analyses aimed to identify the clusters or topics relevant to behavioral strategy and produce insights for how researchers can incorporate behavioral strategy into these relevant clusters or topics. Cluster analysis produced 14 clusters. This number was the dominant vote among several cluster analyses that set the maximum number of SVD dimensions to 100, 200, 300, 400, and 500 respectively. Apart from the
Intersection of Entrepreneurship and Behavioral Strategy 37
default value of 100, all other maximum SVD values (i.e., 200, 300, 400, and 500) produced 14 clusters, which were similar to one another. The following discussion analyzes the information from the cluster analysis that allowed for a maximum number of 300 SDV dimensions. Table 2.3 summarizes the findings of this analysis. Specifically, it provides cluster numbers, terms that most frequently appear in clusters, and frequency and the approximate percentage of clusters. TABLE 2.3 Cluster Number, Descriptive Terms, Frequency, and Percentage Cluster Number
Descriptive Terms
Frequency
Percentage
261
13%
72
4%
1
social capital, sociology, social, trust, cultural, social network, embeddedness, social structure, nonfamily, institution, legitimacy, family business, network
2
networking, network, weak tie, strong tie, network structure, structural hole, network theory, personal network, network-base, networks, network tie, entrepreneurial network, social network, embeddedness
3
strategic entrepreneurship, corporate entrepreneurship, experimentation, business strategy, strategic decision, entrepreneurial orientation, innovate, competitive advantage, leadership, innovativeness
147
7%
4
investor, equity, capitalist, venture capital, financing, venture capitalist, finance, funding, capital investment, capitalist , capital firm, investment, capital industry, investment decision, syndication, capital fund
213
10%
5
resource-based view, firm resource, resources, human resource, resource-base, resource, intangible asset, competitive advantage, competency, nonfamily, firm growth, social capital, survive
166
8%
6
decision maker, heuristics, decision making, decision, judgment, rational, experiment, cognitive, investment, rationality, cognitive process, risk, psychology, behavioral, cognition, bias
240
12%
7
franchisee, franchising, franchise contract, franchise system, business format, trademark, brand name, advertising, intangible asset, contract, vertical integration, opportunism, agency theory, antitrust law
44
2%
8
board, outside director, corporate governance, governance structure, shareholder, governance mechanism, agency theory, ownership structure, family ownership, agency problem, managerial behavior
43
2%
(continued)
38 B. C. KONDUK TABLE 2.3 Cluster Number, Descriptive Terms, Frequency, and Percentage (Continued) Cluster Number
Descriptive Terms
Frequency
Percentage
9
personality, self-employment, self-efficacy, entrepreneurial intention, entrepreneurial career, entrepreneurial experience, emotion, psychologist, psychology, venture creation, prior experience
175
9%
10
discovery, entrepreneurial opportunity, recognition, alertness, prior knowledge, entrepreneurial discovery, cognitive process, effectuation, opportunity identification
127
6%
11
firm performance, performance, performance measure, financial performance, organizational performance, venture performance, profitability, market share, ownership structure, entrepreneurial firm
138
7%
12
product, market share, manufacturer, rival, competitor, product development, advertising marketing, manufacture, brand name, new product, manufacturing, new market, license, differentiation
125
6%
13
alliance partner, alliance formation, alliance activity, alliances, strategic alliance, interorganizational, joint venture, biotechnology industry, interfirm, hightechnology industry, collaborative
30
1%
14
transfer, technology, innovation, new knowledge, commercialization, absorptive, absorptive capacity, innovate, technological innovation, collaboration, intellectual, tacit, tech, technology-base, new technology
248
12%
Cluster 1 includes 261 articles, making it the largest cluster in terms of the number of documents that it contains. Specifically, approximately 13% of the studied articles belong to the first cluster. This cluster focuses on social ties, relations, and thereby, capital across family and non-family firms (Discua, Howorth, & Hamilton, 2013; Lester & Cannella, 2006). It also studies culture, trust, and legitimacy because of their association with social capital. The dominance of this cluster suggests that whom you know matters the most in the context of entrepreneurship. Cluster 2 contains 72 articles. This cluster is one of the smaller clusters as it contains 4% of the sampled articles. Although both Cluster 1 and Cluster 2 broadly examine social relations, Cluster 2 differs from Cluster 1 because of its specific emphasis on the structure, shape, and form of these relationships (Hite, 2005). Specifically, the studies from Cluster 2 investigate networks and their structural properties like tie strength and structural holes. This cluster
Intersection of Entrepreneurship and Behavioral Strategy 39
also looks at different types of networks like social networks, entrepreneurial networks (Vissa & Bhagavatula, 2012), or formal business networks (Parker, 2008). The studies in this cluster predominantly use theories like network theory (Sullivan & Ford, 2014) that are more specific than theories that dominate Cluster 1 to develop their ideas and hypotheses. Cluster 3 includes 147 documents, corresponding to 7% of the sampled documents. This cluster concerns strategic aspects of entrepreneurship. Specifically, it focuses on strategic decisions, strategic conduct, and different types and levels of strategy (McDougall, 1989). For example, studies in this cluster examine strategic entrepreneurship (Wright & Hitt, 2017), corporate entrepreneurship (Hornsby, Kuratko, & Zahra, 2002; Sorrentino & Williams, 1995), strategic experimentation (Nicholls-Nixon, Cooper, & Woo, 2000), and strategic decisions (Kisfalvi, 2002). Given that studies in this cluster capture the strategic aspects of entrepreneurship, the behavioral strategy is inherently relevant to this sixth largest cluster. Behavioral strategy can be a part of this cluster if researchers combine the studied strategic aspects of entrepreneurship with cognitive and social psychology. Such combination, for example, can empower researchers to find out the appropriate mindset and the strategy types that can shape the environment rather than be shaped by it, especially in the case of uncertainty, contributing to the concept of effectuation (Palmié, Huerzeler, Grichnik, Keupp, & Gassmann, 2019) in the entrepreneurship literature. Cluster 4 contains 213 documents, constituting 10% of the studied documents. This cluster is the fourth largest cluster. The crux of this cluster is investment and financing. In particular, it focuses on financing (Orser, Riding, & Manley, 2006; Schwienbacher, 2007), venture capitalist (Manigart, 1994), syndication (Cumming & Dai, 2013), venture capital industry (Bruno & Tyebjee, 1985; Gupta & Sapienza, 1992), and capital funds (Robinson, 1987). Investment and financing decisions that this cluster covers are prone to errors that derive from human cognition, emotion, and biases. Thus, this cluster is relevant to behavioral strategy. However, behavioral finance (Shefrin, 2000) is better positioned than behavioral strategy to contribute to this cluster because of its specialized expertise for analyzing and understanding the behavioral roots of financing decisions. Cluster 5 includes 166 documents. Documents in this cluster constitute approximately 8% of the sampled documents, making it the sixth most significant cluster. The gist of this cluster is resources (Chandler & Hanks, 1994; De Clercq, Lim, & Oh, 2013). The documents in this cluster thereby use the resource-based view (Westhead, Wright, & Ucbasaran, 2001) as the central theoretical perspective and examine competencies and different types of resources like human resources (Symeonidou & Nicolaou, 2018) and social capital (Wu, Wang, Chen, & Pan, 2008). This cluster also studies various outcomes of resources (Jarillo, 1989) such as survival and
40 B. C. KONDUK
competitive advantage (Miller, Spann, & Lerner, 1991), which can mainly derive from intangible resources. Given that the resource-based view is one of the essential perspectives in the strategy literature, the behavioral strategy can serve this fifth largest cluster. For example, researchers can use theories and ideas from the resource-based view and cognitive psychology to study creative and novel use of resources especially in the face of scarcity, contributing to the concept of bricolage (Welter, Mauer, & Wuebker, 2016) from the entrepreneurship literature. Cluster 6 contains 166 documents, corresponding to approximately 12% of the sampled documents. This cluster is the third largest among the 14 clusters. It is all about decision making (Dew, Read, Sarasvathy, & Wiltbank, 2009). This cluster uses psychology and cognitive approaches (Mitchell et al., 2007) to study decisions, judgment, rationality, and biases (Burmeister & Schade, 2007; Busenitz & Barney, 1997; Townsend, Busenitz, & Arthurs, 2010). Cluster 6 is relevant to behavioral strategy because of its disciplinary roots and incorporation of strategic decision making. Actually, behavioral strategy currently plays a role in this cluster. For example, 136 sampled documents discuss strategic decision making and 32 documents refer to strategic thinking as indicated in Table 2.2 from predominantly a cognitive perspective. Cluster 7 contains 44 documents, comprising approximately 2% of the sampled documents. The main concern of this rather small cluster is franchising. Whether franchising is an entrepreneurial act has been a contentious issue (Ketchen, Short, & Combs, 2011). The small size of this cluster may be due to this debate. The studies that belong to this cluster examine integration or de-integration decisions (Michael, 1996) that lead to franchise contracts and systems (Vincent, 1998) that have implications for trademarks, brand names, and advertising. This cluster also focuses on the conflict of interest between franchisee and franchisor (Kidwell, Nygaard, & Silkoset, 2007; Spinelli & Birley, 1996) which are the subject matters of agency theory (Gillis, McEwan, Crook, & Michael, 2011) and antitrust law (Vincent, 1998). Cluster 8 contains 43 documents. Similar to Cluster 7, this cluster includes roughly 2% of the sampled documents, making it one of the smaller clusters. Corporate governance is the primary subject matter of this cluster. The size of this cluster suggests that corporate governance is not one of the central issues in the academic domain of entrepreneurship. This cluster studies board composition, types of directors like outside directors, and ownership structure that mainly concerns shareholder and family ownership (Arregle, Naldi, Nordqvist, & Hitt, 2012; Daily & Dalton, 1992). Given that this cluster focuses on the alignment of the interests of shareholders with those of managers, it frequently alludes to agency theory. Cluster 9 contains 175 documents. This cluster is the fifth largest cluster, corresponding to 9% of all sampled articles. This cluster approaches an
Intersection of Entrepreneurship and Behavioral Strategy 41
entrepreneur as an individual. Thus, documents in this cluster study entrepreneurial intention (Douglas, 2013), career (Lee & Wong, 2004), self-efficacy (Chen, Greene, & Crick, 1998; Wilson, Kickul, & Marlino, 2007), experience (Eesley & Roberts, 2012; Ucbasaran, Westhead, Wright, & Flores, 2010), and emotion (Cardon et al., 2012). Psychology is the leading guide of the studies in this cluster. This cluster thereby is a potential target for behavioral strategy. Injecting ideas, theories, and concepts from the strategic management literature into this cluster can strengthen the role of behavioral strategy in the entrepreneurship literature. Cluster 10 has 127 documents, constituting 6% of the analyzed documents. This cluster focuses on opportunities. In particular, studies in this cluster examine cognitive processes (Baron, 2004) of opportunity discovery (Murphy, 2011), recognition (McCline et al., 2000), evaluation (Keh et al., 2002), creation (Goss & Sadler-Smith, 2018), co-creation (Sun & Im, 2015), and identification (Ardichvili, Cardozo, & Ray, 2003) through prior knowledge and alertness (McCaffrey, 2014; Valliere, 2013). Studies in this cluster thereby underscore the first stage of the entrepreneurial process and do not emphasize the exploitation of opportunity. The dominance of cognitive perspectives in this cluster makes it another important target for behavioral strategy. However, this cluster’s limited attention to opportunity exploitation constrains the impact of behavioral strategy that is concerned with performance, which, in turn, is more likely to derive from exploitation of an opportunity rather than its discovery, recognition, or evaluation. Also, the entrepreneurship literature already borrows heavily from cognitive and social psychology to study opportunity recognition, limiting the contribution of behavioral strategy to this cluster. For example, Grégoire et al. (2010) use a well-established theory of analogical reasoning to study opportunity recognition. Cluster 11 consists of 138 documents and thereby almost cover 7% of the studied documents. The central theme of this cluster is performance. Work by Zahra (1991), Singal and Singal (2011), and Durand and Coeurderoy (2001) illustrates the studies that belong to this cluster. The performance orientation of this cluster relates it to behavioral strategy as the broader field of strategic management has an innate performance orientation. For example, Gaba and Bhattacharya (2012) use the behavioral theory of the firm as the central perspective to shed new light on innovation performance. Entrepreneurship (strategy) scholars can directly import (export) behavioral strategy to contribute to this cluster. Cluster 12 is composed of 125 documents. This cluster thereby includes approximately 6% of studied documents. Products are the focus of this cluster. In particular, studies in this cluster explain the development (Plambeck, 2012), manufacturing (Abetti & Phan, 2004), and launch of new products (Simon & Shrader, 2012). They also discuss competition and
42 B. C. KONDUK
rivalry through the order and timing of new products (Srivastava & Lee, 2005) and their positioning (Boone, Wezel, & Van Witteloostuijin, 2013). Cluster 13 contains merely 30 studies. This cluster is the smallest cluster. Approximately 1% of sampled studies pertain to this cluster. The studies in this cluster are about alliances. Specifically, the studies in this cluster describe and explain alliance formation (Moghaddam, Bosse, & Provance, 2016) and activities (Leiblein & Reuer, 2004; Li, 2013) in especially technology industries (Leiblein & Reuer, 2004) like biotechnology industry (Coombs, Mudambi, & Deeds, 2006). The extensive study of alliances in other fields like strategy may be the reason for the small size of this cluster. The small size of this cluster can also be due to the possibility that entrepreneurs use social capital more frequently than alliances to obtain needed resources. Cluster 14, the final cluster, has 248 articles, making it the second largest cluster. The large size of this cluster is not surprising because this cluster examines and studies innovation (Baron & Tang, 2011; Penney & Combs, 2013), which is critical to entrepreneurship. Specifically, studies in this cluster explore technological innovation (Kelley & Rice, 2001) and thereby new technologies (Julien, 1995; Roy, Lampert, & Stoyneva, 2018) and their commercialization and transfer (Shane, 2002). Due to its subject matter, studies in this cluster frequently adopt absorptive capacity (Zahra, Filatotchev, & Wright, 2009) as the guiding perspective. By examining the absorptive capacity of entrepreneurs rather than firms, researchers can link cognitive roots of absorptive capacity to detection and commercialization of external knowledge, creating a role for behavioral strategy in this cluster. Overall, the cluster analysis produced 14 clusters, and further examination of these clusters showed that seven of them were more relevant to behavioral strategy than others. Specifically, Cluster 3, which is about strategic aspects of entrepreneurship, Cluster 5, which studies resources, Cluster 6, which examines decision making, Cluster 9, which studies entrepreneurs, Cluster 10, which examines opportunity, Cluster 11, which focuses on performance, and Cluster 14, which studies innovation, are relevant to behavioral strategy. Behavioral strategy can contribute to these clusters. The aforementioned results of the cluster analysis, however, can overlook some areas of the field of entrepreneurship and thereby underrepresent the importance or relevance of behavioral strategy to the entrepreneurship literature. The reason for this stems from the fact that cluster analysis forces each document to belong to only one cluster. This constraint can, in turn, lead to the detection of fewer domains than available in the entrepreneurship literature. Topic modeling overcomes this problem by allowing each document to belong to multiple topics. Thus, this study carried out topic modeling and examined an alternative number of topics. Among the investigated alternatives, 40 topics effectively represented the sampled documents. Table 2.4 summarizes the findings
253 210
investment, venture capital, syndication, uncertainty, capital investment
decision, decision making, cognitive, judgment
performance, firm performance, venture performance, profitability, environmental
product, new product, competitive, advantage, competitor
resource, advantage, resource-base, nascent, bricolage
network, social network, networking, social capital
opportunity, discovery, exploitation, entrepreneurial opportunity, alertness
3
4
5
6
7
8
9
163
innovation, innovative, innovator, innovate
capital, social capital, human capital, venture capital, nascent
process, entrepreneurial process, effectuation, nascent, creative
alliance, biotechnology, strategic alliance, partner, opportunism
institutional, institution, legal, cultural, legitimacy
individual, nascent, nascent entrepreneur, entrepreneurial intention, self-efficacy
franchisee, contract, franchise system, franchising, competition
information, information asymmetry, survival, alertness, competitor
experience, team, human capital, novice, prior experience
11
12
13
14
15
16
17
18
19
188
166
57
225
137
60
263
227
263
strategic, strategic entrepreneurship, corporate entrepreneurship, competitive, business model
10
185
131
212
195
173
219
social, social entrepreneurship, social capital, stakeholder, social entrepreneur
2
178
Cassar (2014)
Vaghely & Julien (2010)
Jambulingam & Nevin (1999)
Levesque & Minniti (2006)
Bruton, Ahlstrom, & Li (2010)
Rothaermel & Deeds (2006)
Moroz &Hindle (2012)
(continued)
Unger, Rauch, Frese, & Rosenbusch (2011)
Pérez-Luño, Wiklund, & Cabrera (2011)
Anderson, Covin & Slevin (2009)
Wood & Mckinley (2017)
Slotte-Kock & Coviello (2010)
Townsend & Busenitz (2008)
Karakaya & Kobu (1994)
Chandler & Hanks (1993)
Amit, MacCrimmon, Zietsma, & Oesch (2001)
Jackson, Bates, & Bradford ( 2012)
Short, Moss, & Lumpkin (2009)
Ko & Liu (2015)
Frequency Example
knowledge, spillover, knowledge spillover, absorptive, transfer
Descriptive Terms
1
Topic Number
TABLE 2.4 Topic Number, Descriptive Terms, Frequency, and Example
Intersection of Entrepreneurship and Behavioral Strategy 43
technology, transfer, license, incubator, technology
risk, risk-take, emotion, risk propensity
strategy, competitive, competitor, differentiation, profitability
board, shareholder, outside director, leadership
new venture, survival, legitimacy, nascent, venture performance
investor, financing, funding, syndication, angel investor
group, team, diversity, cultural, tmt
trust, relational, contract, asset, legal
financial, asset, financing, survival, profitability
capitalist, venture capitalist, venture capital, team, capital firm
learning, organizational learning, heuristics, entrepreneurial learning
self-employment, unemployment, labor, individual, regional
family business, nonfamily, asset, stakeholder, stewardship
capability, advantage, competitive, capacity, asset
cluster, location, regional, region, competitive
cognitive, cognition, affect, emotion, team
issue, legal, cognition, nascent, attention
equity, financing, asset, security, contract
policy, regional, region, labor, institution
uncertainty, environmental, stakeholder, effectuation, effectual
motivation, emotion, affect, emotional, psychology
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
Descriptive Terms
20
Topic Number
144
158
167
141
182
175
98
122
157
60
96
116
213
74
194
156
145
81
182
154
175
McMullen, & Warnick (2015)
McKelvie, Haynie, & Gustavsson (2011)
Minniti, (2008)
Cumming, (2005)
Brown, Colborne, & McMullan (1988)
Baron & Ward (2004)
Folta, Cooper & Baik (2006)
Al–Aali & Teece (2014)
Olson, Zuiker, Danes, Stafford, Heck, & Duncan (2003)
Saridakis, Marlow, & Storey (2014)
Cope (2005)
Parhankangas & Landström (2006)
Brinckmann, Salomo & Gemuenden (2011)
Nguyen & Rose (2009)
Lechner & Leyronas (2009)
Vanacker, Manigart, & Meuleman (2014)
Fernhaber & Li (2010)
Gabrielsson (2007)
Ott, Eisenhardt & Bingham (2017)
Mullins & Forlani (2005)
Harmon, Ardishvili, Cardozo, Elder, Leuthold, Parshall, Raghian, & Smith (1997)
Frequency Example
TABLE 2.4 Topic Number, Descriptive Terms, Frequency, and Example (Continued)
44 B. C. KONDUK
Intersection of Entrepreneurship and Behavioral Strategy 45
from these topics. Specifically, it provides descriptive terms, frequencies, and the exemplary study of a topic. Both descriptive terms and exemplary published articles are the best portrayals of identified topics because of their highest association with them (Chakraborty et al., 2013). Comparison of Table 2.4 with Table 2.3 shows that there are more topics than clusters. This finding is not surprising because topic modeling allows documents to belong to multiple topics, leading the sum of frequencies in Table 2.4 to exceed the number of sampled documents. The results from cluster analysis and topic modeling show that clusters emphasize particular topics but neglect others. Specifically, social capital, network, strategy, investment, financing, resource-based view, decision making, franchising, corporate governance, entrepreneur, opportunity, performance, products, alliances, and innovation are the subject matters of both identified clusters and topics. As discussed above, the behavioral strategy can contribute to some of these overlapping areas like strategy, resources, decision making, entrepreneur, opportunity, performance, and innovation. In addition to producing these topics that overlap with the results of the cluster analysis, topic modeling produces distinct and new topics that the detected clusters do not sufficiently emphasize. For example, Topic 13 (i.e., entrepreneurial process), Topic 15 (i.e., institution and legitimacy), Topic 21 (i.e., risk propensity), Topic 26 (i.e., groups and teams), Topic 30 (i.e., entrepreneurial learning), Topic 34 (i.e., clusters and competition), Topic 38 (i.e., policy and region), and Topic 39 (i.e., uncertainty and effectuation) are not central to the detected clusters. They do not define the identity of clusters. Examination of these distinct topics that do not overlap with the results of the cluster analysis shows that behavioral strategy can assume more roles in the entrepreneurship literature than the cluster analysis showed. Specifically, behavioral strategy can contribute to Topic 13, 15, 21, 26, 30, and 39. Topic 13 relates to behavioral strategy because the strategy literature, like the entrepreneurship literature, has a process orientation. Specifically, it views strategy formulation as a process (Hax & Majluf, 1988) that has roots in cognition (Stubbart, 1989). Thus, the entrepreneurship literature can import this behavioral perspective from the strategy literature to enrich its study of the entrepreneurial process, the subject matter of Topic 13. Institutions and institutional theories and thereby Topic 15 have always been an essential part of the strategy literature and practice. Popular and recent approaches especially emphasize the cognitive roots of institutions (Kallinikos, 1995) like neo-institutional theory (Alvesson & Spicer, 2019). The entrepreneurship literature can adopt this cognitive approach to institutions directly from the strategy literature. In that regard, it can study how entrepreneurs can use non-market strategies (Liedong, Rajwani, & Mellahi, 2017) to influence the cognitive roots of institutions and legitimize their practices.
46 B. C. KONDUK
Risk propensity and entrepreneurial learning are the other topics that should be amenable to contributions from behavioral strategy. The strategy literature has been studying risk propensity and learning at different levels of analysis. Since entrepreneurs are at the center of entrepreneurship, individual learning (Kim, 1993) and risk-taking (To, Kilduff, Ordoñez, & Schweitzer, 2018) approaches of behavioral strategy can inform the entrepreneurship literature. Behavioral strategy can also contribute to the work on groups and teams in the entrepreneurship literature because the strategy literature has been extensively studying these topics from a cognitive perspective. For example, upper echelons theory, which is widely used and tested in the strategy literature within the context of top management teams (TMT), predicts that managers’ characteristics, both observable and unobservable, influence their perceptions (Hambrick, Humphrey, & Gupta, 2015). It also asserts that moderate levels of team heterogeneity can lead to diversity in ideas, which, in turn, can spur innovation (Ferrier & Lyon, 2004), a central concept in the entrepreneurship literature. By adopting the fundamental ideas from the upper echelons perspective, the entrepreneurship literature can enrich its work on groups and teams as has been already done (Vanaelst et al., 2006). Finally, the topic of effectuation (Palmié et al., 2019) can benefit from behavioral strategy. The purpose of effectuation is to shape the environment under uncertainty. The same purpose has been at the center of the strategic management literature long before the concept of effectuation became popular in the entrepreneurship literature. Thus, strategic management and its behavioral strategy branch can share its expertise with the entrepreneurship literature and contribute to the topic of effectuation. Especially, strategy as a practice perspective can refine the topic of effectuation due to its focus on social activities at micro-level (Whittington, 1996). CONCLUSION This study examined the role of behavioral strategy in the entrepreneurship literature. Specifically, it investigated entrepreneurship literature’s topics, clusters, and the intersection with both strategy and behavioral strategy. To this end, it analyzed the articles published in the top three journals dedicated to entrepreneurship through unsupervised machine learning. Most frequently used terms and their linkages showed that behavioral strategy influenced the field of entrepreneurship through its either behavioral or strategic roots but not both. Also, cluster analysis and topic modeling identified the clusters or topics in which behavioral strategy has been active or could potentially play an important role.
Intersection of Entrepreneurship and Behavioral Strategy 47
REFERENCES Abetti, P. A., & Phan, P. H. (2004). Zobele chemical industries: The evolution of a family company from flypaper to globalization (1919–2001). Journal of Business Venturing, 19(4), 589–600. Al-Aali, A., & Teece, D. J. (2014). International entrepreneurship and the theory of the (long-lived) international firm: A capabilities perspective. Entrepreneurship Theory and Practice, 38(1), 95–116. Alvesson, M., & Spicer, A. (2019). Neo-institutional theory and organization studies: A mid-life crisis? Organization Studies, 40(2), 199–218. Amit, R., MacCrimmon, K. R., Zietsma, C., & Oesch, J. M. (2001). Does money matter?: Wealth attainment as the motive for initiating growth-oriented technology ventures. Journal of Business Venturing, 16(2), 119–143. Anderson, B. S., Covin, J. G., & Slevin, D. P. (2009). Understanding the relationship between entrepreneurial orientation and strategic learning capability: An empirical investigation. Strategic Entrepreneurship Journal, 3(3), 218–240. Ardichvili, A., Cardozo, R., & Ray, S. (2003). A theory of entrepreneurial opportunity identification and development. Journal of Business Venturing, 18(1), 105–123. Arregle, J. L., Naldi, L., Nordqvist, M., & Hitt, M. A. (2012). Internationalization of family-controlled firms: A study of the effects of external involvement in governance. Entrepreneurship Theory and Practice, 36(6), 1115–1143. Barney, J. B. (1986). Strategic factor markets: Expectations, luck and business strategy. Management Science, 32(10), 1231–1241. Baron, R. A. (2004). The cognitive perspective: A valuable tool for answering entrepreneurship’s basic “why” questions. Journal of Business Venturing, 19(2), 221–239. Baron, R. A., & Ward, T. B. (2004). Expanding entrepreneurial cognition’s toolbox: Potential contributions from the field of cognitive science. Entrepreneurship Theory and Practice, 28(6), 553–573. Baron, R. A., & Tang, J. (2011). The role of entrepreneurs in firm-level innovation: Joint effects of positive affect, creativity, and environmental dynamism. Journal of Business Venturing, 26(1), 49–60. Boone, C., Wezel, F. C., & Van Witteloostuijn, A. (2013). Joining the pack or going solo? A dynamic theory of new firm positioning. Journal of Business Venturing, 28(4), 511–527. Brinckmann, J., Salomo, S., & Gemuenden, H. G. (2011). Financial management competence of founding teams and growth of new technology-based firms. Entrepreneurship Theory and Practice, 35(2), 217–243. Brown, C. A., Colborne, C. H., & McMullan, W. E. (1988). Legal issues in new venture development. Journal of Business Venturing, 3(4), 273–286. Bruno, A. V., & Tyebjee, T. T. (1985). The entrepreneur’s search for capital. Journal of Business Venturing, 1(1), 61–74. Bruton, G. D., Ahlstrom, D., & Li, H. L. (2010). Institutional theory and entrepreneurship: Where are we now and where do we need to move in the future? Entrepreneurship Theory and Practice, 34(3), 421–440.
48 B. C. KONDUK Burmeister, K., & Schade, C. (2007). Are entrepreneurs’ decisions more biased? An experimental investigation of the susceptibility to status quo bias. Journal of Business Venturing, 22(3), 340–362. Busenitz, L. W., & Barney, J. B. (1997). Differences between entrepreneurs and managers in large organizations: Biases and heuristics in strategic decisionmaking. Journal of Business Venturing, 12(1), 9–30. Cardon, M. S., Foo, M. D., Shepherd, D., & Wiklund, J. (2012). Exploring the heart: Entrepreneurial emotion is a hot topic. Entrepreneurship Theory and Practice, 36(1), 1–10. Cassar, G. (2014). Industry and startup experience on entrepreneur forecast performance in new firms. Journal of Business Venturing, 29(1), 137–151. Chakraborty, G., Pagolu, M., & Garla, S. (2013). Text mining and analysis: Practical methods, examples, and case studies using SAS. Cary, NC: SAS Institute. Chandler, G. N., & Hanks, S. H. (1993). Measuring the performance of emerging businesses: A validation study. Journal of Business Venturing, 8(5), 391–408. Chandler, G. N., & Hanks, S. H. (1994). Market attractiveness, resource-based capabilities, venture strategies, and venture performance. Journal of Business Venturing, 9(4), 331–349. Chen, C. C., Greene, P. G., & Crick, A. (1998). Does entrepreneurial self-efficacy distinguish entrepreneurs from managers? Journal of Business Venturing, 13(4), 295–316. Chen, H., De, P., Hu, Y. J., & Hwang, B. H. (2014). Wisdom of crowds: The value of stock opinions transmitted through social media. Review of Financial Studies, 27(5), 1367–1403. Chevalier, J. A., & Mayzlin, D. (2006). The effect of word of mouth on sales: Online book reviews. Journal of Marketing Research, 43(3), 345–354. Coff, R. W. (2010). The coevolution of rent appropriation and capability development. Strategic Management Journal, 31(7), 711–733. Coombs, J. E., Mudambi, R., & Deeds, D. L. (2006). An examination of the investments in US biotechnology firms by foreign and domestic corporate partners. Journal of Business Venturing, 21(4), 405–428. Cope, J. (2005). Toward a dynamic learning perspective of entrepreneurship. Entrepreneurship Theory and Practice, 29(4), 373–397. Cumming, D. J. (2005). Agency costs, institutions, learning, and taxation in venture capital contracting. Journal of Business Venturing, 20(5), 573–622. Cumming, D., & Dai, N. (2013). Why do entrepreneurs switch lead venture capitalists? Entrepreneurship Theory and Practice, 37(5), 999–1017. Daily, C. M., & Dalton, D. R. (1992). The relationship between governance structure and corporate performance in entrepreneurial firms. Journal of Business Venturing, 7(5), 375–386. Das, T. K., & Teng, B. (1999). Cognitive biases and strategic decision processes: An integrative perspective. Journal of Management Studies, 36(6), 757–778. De Clercq, D., Lim, D. S., & Oh, C. H. (2013). Individual-level resources and new business activity: The contingent role of institutional context. Entrepreneurship Theory and Practice, 37(2), 303–330.
Intersection of Entrepreneurship and Behavioral Strategy 49 Dew, N., Read, S., Sarasvathy, S. D., & Wiltbank, R. (2009). Effectual versus predictive logics in entrepreneurial decision-making: Differences between experts and novices. Journal of Business Venturing, 24(4), 287–309. Discua Cruz, A., Howorth, C., & Hamilton, E. (2013). Intrafamily entrepreneurship: The formation and membership of family entrepreneurial teams. Entrepreneurship Theory and Practice, 37(1), 17–46. Douglas, E. J. (2013). Reconstructing entrepreneurial intentions to identify predisposition for growth. Journal of Business Venturing, 28(5), 633–651. Durand, R., & Coeurderoy, R. (2001). Age, order of entry, strategic orientation, and organizational performance. Journal of Business Venturing, 16(5), 471–494. Eesley, C. E., & Roberts, E. B. (2012). Are you experienced or are you talented?: When does innate talent versus experience explain entrepreneurial performance? Strategic Entrepreneurship Journal, 6(3), 207–219. Fernhaber, S. A., & Li, D. (2010). The impact of interorganizational imitation on new venture international entry and performance. Entrepreneurship Theory and Practice, 34(1), 1–30. Ferreira, M. P., Reis, N. R., & Miranda, R. (2015). Thirty years of entrepreneurship research published in top journals: Analysis of citations, co-citations and themes. Journal of Global Entrepreneurship Research, 5(1), 1–22. Ferrier, W. J., & Lyon, D. W. (2004). Competitive repertoire simplicity and firm performance: The moderating role of top management team heterogeneity. Managerial and Decision Economics, 25(6–7), 317–327. Financial Times. (2019). 50 journals used in FT research rank. https://www.ft.com/ content/3405a512-5cbb-11e1-8f1f-00144feabdc0 Folta, T. B., Cooper, A. C., & Baik, Y. S. (2006). Geographic cluster size and firm performance. Journal of Business Venturing, 21(2), 217–242. Gaba, V., & Bhattacharya, S. (2012). Aspirations, innovation, and corporate venture capital: A behavioral perspective. Strategic Entrepreneurship Journal, 6(2), 178–199. Gabrielsson, J. (2007). Correlates of board empowerment in small companies. Entrepreneurship Theory and Practice, 31(5), 687–711. Gentzkow, M., Kelly, B. T., & Taddy, M. (2017). Text as data. http://dx.doi.org/10 .2139/ssrn.2934001 Gillis, W. E., McEwan, E., Crook, T. R., & Michael, S. C. (2011). Using tournaments to reduce agency problems: The case of franchising. Entrepreneurship Theory and Practice, 35(3), 427–447. Goss, D., & Sadler-Smith, E. (2018). Opportunity creation: Entrepreneurial agency, interaction, and affect. Strategic Entrepreneurship Journal, 12(2), 219–236. Grégoire, D. A., Barr, P. S., & Shepherd, D. A. (2010). Cognitive processes of opportunity recognition: The role of structural alignment. Organization Science, 21(2), 413–431. Gupta, A. K., & Sapienza, H. J. (1992). Determinants of venture capital firms’ preferences regarding the industry diversity and geographic scope of their investments. Journal of Business Venturing, 7(5), 347–362. Hambrick, D. C., Humphrey, S. E., & Gupta, A. (2015). Structural interdependence within top management teams: A key moderator of upper echelons predictions. Strategic Management Journal, 36(3), 449–461.
50 B. C. KONDUK Harmon, B., Ardishvili, A., Cardozo, R., Elder, T., Leuthold, J., Parshall, J., Raghian, M., & Smith, D. (1997). Mapping the university technology transfer process. Journal of Business Venturing, 12(6), 423–434. Hax, A. C., & Majluf, N. S. (1988). The concept of strategy and the strategy formation process. Interfaces, 18(3), 99–109. Hite, J. M. (2005). Evolutionary processes and paths of relationally embedded network ties in emerging entrepreneurial firms. Entrepreneurship Theory and Practice, 29(1), 113–144. Hofmann, T. (2001). Unsupervised learning by probabilistic latent semantic analysis. Machine Learning, 42(1–2), 177–196. Hornsby, J. S., Kuratko, D. F., & Zahra, S. A. (2002). Middle managers’ perception of the internal environment for corporate entrepreneurship: Assessing a measurement scale. Journal of Business Venturing, 17(3), 253–273. Jackson, W. E. III, Bates, T., & Bradford, W. D. (2012). Does venture capitalist activism improve investment performance? Journal of Business Venturing, 27(3), 342–354. Jambulingam, T., & Nevin, J. R. (1999). Influence of franchisee selection criteria on outcomes desired by the franchisor. Journal of Business Venturing, 14(4), 363–395. James, G., Witten, D., Hastie, T., & Tibshirani, R. (2013). An introduction to statistical learning. New York, NY: Springer. Jarillo, J. C. (1989). Entrepreneurship and growth: The strategic use of external resources. Journal of Business Venturing, 4(2), 133–147. Julien, P. A. (1995). New technologies and technological information in small businesses. Journal of Business Venturing, 10(6), 459–475. Kallinikos, J. (1995). Cognitive foundations of economic institutions: Markets, organizations and networks revisited. Scandinavian Journal of Management, 11(2), 119–137. Karakaya, F., & Kobu, B. (1994). New product development process: An investigation of success and failure in high-technology and non-high-technology firms. Journal of Business Venturing, 9(1), 49–66. Keh, H. T., Der Foo, M., & Lim, B. C. (2002). Opportunity evaluation under risky conditions: The cognitive processes of entrepreneurs. Entrepreneurship Theory and Practice, 27(2), 125–148. Kelley, D. J., & Rice, M. P. (2001). Technology-based strategic actions in new firms: The influence of founding technology resources. Entrepreneurship Theory and Practice, 26(1), 55–71. Ketchen, D. J., Jr., Short, J. C., & Combs, J. G. (2011). Is franchising entrepreneurship? Yes, no, and maybe so. Entrepreneurship Theory and Practice, 35(3), 583–593. Kidwell, R. E., Nygaard, A., & Silkoset, R. (2007). Antecedents and effects of free riding in the franchisor–franchisee relationship. Journal of Business Venturing, 22(4), 522–544. Kim, D. H. (1993). The link between individual and organizational learning. Sloan Management Review, 33(1), 37–50. Kisfalvi, V. (2002). The entrepreneur’s character, life issues, and strategy making: A field study. Journal of Business Venturing, 17(5), 489–518.
Intersection of Entrepreneurship and Behavioral Strategy 51 Ko, W. W., & Liu, G. (2015). Understanding the process of knowledge spillovers: Learning to become social enterprises. Strategic Entrepreneurship Journal, 9(3), 263–285. Lechner, C., & Leyronas, C. (2009). Small-business group formation as an entrepreneurial development model. Entrepreneurship Theory and Practice, 33(3), 645–667. Lee, S. H., & Wong, P. K. (2004). An exploratory study of technopreneurial intentions: A career anchor perspective. Journal of Business Venturing, 19(1), 7–28. Leiblein, M. J., & Reuer, J. J. (2004). Building a foreign sales base: The roles of capabilities and alliances for entrepreneurial firms. Journal of Business Venturing, 19(2), 285–307. Lester, R. H., & Cannella, A. A., Jr. (2006). Interorganizational familiness: How family firms use interlocking directorates to build community-level social capital. Entrepreneurship Theory and Practice, 30(6), 755–775. Levesque, M., & Minniti, M. (2006). The effect of aging on entrepreneurial behavior. Journal of Business Venturing, 21(2), 177–194. Levinthal, D. A. (2011). A behavioral approach to strategy—What’s the alternative? Strategic Management Journal, 32(13), 1517–1523. Li, D. (2013). Multilateral R&D alliances by new ventures. Journal of Business Venturing, 28(2), 241–260. Liedong, T. A., Rajwani, T., & Mellahi, K. (2017). Reality or illusion? The efficacy of non-market strategy in institutional risk reduction. British Journal of Management, 28(4), 609–628. Liu, L., Tang, L., Dong, W., Yao, S., & Zhou, W. (2016). An overview of topic modeling and its current applications in bioinformatics. SpringerPlus, 5(1), Article 1608. https://doi.org/10.1186/s40064-016-3252-8 Loughran, T., & McDonald, B. (2016). Textual analysis in accounting and finance: A survey. Journal of Accounting Research, 54(4), 1187–1230. Manigart, S. (1994). The founding rate of venture capital firms in three European countries (1970–1990). Journal of Business Venturing, 9(6), 525–541. McCaffrey, M. (2014). On the theory of entrepreneurial incentives and alertness. Entrepreneurship Theory and Practice, 38(4), 891–911. McCline, R. L., Bhat, S., & Baj, P. (2000). Opportunity recognition: An exploratory investigation of a component of the entrepreneurial process in the context of the health care industry. Entrepreneurship Theory and Practice, 25(2), 81–94. McDougall, P. P. (1989). International versus domestic entrepreneurship: New venture strategic behavior and industry structure. Journal of Business Venturing, 4(6), 387–400. McKelvie, A., Haynie, J. M., & Gustavsson, V. (2011). Unpacking the uncertainty construct: Implications for entrepreneurial action. Journal of Business Venturing, 26(3), 273–292. McMullen, J. S., & Dimov, D. (2013). Time and the entrepreneurial journey: The problems and promise of studying entrepreneurship as a process. Journal of Management Studies, 50(8), 1481–1512. McMullen, J. S., & Shepherd, D. A. (2006). Entrepreneurial action and the role of uncertainty in the theory of the entrepreneur. Academy of Management Review, 31(1), 132–152.
52 B. C. KONDUK McMullen, J. S., & Warnick, B. J. (2015). Article commentary: To nurture or groom? The parent-founder succession dilemma. Entrepreneurship Theory and Practice, 39(6), 1379–1412. Michael, S. C. (1996). To franchise or not to franchise: An analysis of decision rights and organizational form shares. Journal of Business Venturing, 11(1), 57–71. Miller, A., Spann, M. S., & Lerner, L. (1991). Competitive advantages in new corporate ventures: The impact of resource sharing and reporting level. Journal of Business Venturing, 6(5), 335–350. Minniti, M. (2008). The role of government policy on entrepreneurial activity: Productive, unproductive, or destructive? Entrepreneurship Theory and Practice, 32(5), 779–790. Mitchell, R. K., Busenitz, L. W., Bird, B., Marie Gaglio, C., McMullen, J. S., Morse, E. A., & Smith, J. B. (2007). The central question in entrepreneurial cognition research 2007. Entrepreneurship Theory and Practice, 31(1), 1–27. Moghaddam, K., Bosse, D. A., & Provance, M. (2016). Strategic alliances of entrepreneurial firms: Value enhancing then value destroying. Strategic Entrepreneurship Journal, 10(2), 153–168. Moroz, P. W., & Hindle, K. (2012). Entrepreneurship as a process: Toward harmonizing multiple perspectives. Entrepreneurship Theory and Practice, 36(4), 781–818. Mullins, J. W., & Forlani, D. (2005). Missing the boat or sinking the boat: A study of new venture decision making. Journal of Business Venturing, 20(1), 47–69. Murphy, P. J. (2011). A 2×2 conceptual foundation for entrepreneurial discovery theory. Entrepreneurship Theory and Practice, 35(2), 359–374. Newbert, S. L. (2008). Value, rareness, competitive advantage, and performance: A conceptual-level empirical investigation of the resource-based view. Strategic Management Journal, 29(7), 745–768. Nguyen, T. V., & Rose, J. (2009). Building trust—Evidence from Vietnamese entrepreneurs. Journal of Business Venturing, 24(2), 165–182. Nicholls-Nixon, C. L., Cooper, A. C., & Woo, C. Y. (2000). Strategic experimentation: Understanding change and performance in new ventures. Journal of Business Venturing, 15(5–6), 493–521. Olson, P. D., Zuiker, V. S., Danes, S. M., Stafford, K., Heck, R. K., & Duncan, K. A. (2003). The impact of the family and the business on family business sustainability. Journal of Business Venturing, 18(5), 639–666. Orser, B. J., Riding, A. L., & Manley, K. (2006). Women entrepreneurs and financial capital. Entrepreneurship Theory and Practice, 30(5), 643–665. Ott, T. E., Eisenhardt, K. M., & Bingham, C. B. (2017). Strategy formation in entrepreneurial settings: Past insights and future directions. Strategic Entrepreneurship Journal, 11(3), 306–325. Palmié, M., Huerzeler, P., Grichnik, D., Keupp, M. M., & Gassmann, O. (2019). Some principles are more equal than others: Promotion- versus preventionfocused effectuation principles and their disparate relationships with entrepreneurial orientation. Strategic Entrepreneurship Journal, 13(1), 93–117. Parhankangas, A., & Landström, H. (2006). How venture capitalists respond to unmet expectations: The role of social environment. Journal of Business Venturing, 21(6), 773–801.
Intersection of Entrepreneurship and Behavioral Strategy 53 Parker, S. C. (2008). The economics of formal business networks. Journal of Business Venturing, 23(6), 627–640. Penney, C. R., & Combs, J. G. (2013). Insights from family science: The case of innovation. Entrepreneurship Theory and Practice, 37(6), 1421–1427. Pérez-Luño, A., Wiklund, J., & Cabrera, R. V. (2011). The dual nature of innovative activity: How entrepreneurial orientation influences innovation generation and adoption. Journal of Business Venturing, 26(5), 555–571. Plambeck, N. (2012). The development of new products: The role of firm context and managerial cognition. Journal of Business Venturing, 27(6), 607–621. Powell, T. C., Lovallo, D., & Fox, C. R. (2011). Behavioral strategy. Strategic Management Journal, 32(13), 1369–1368. Robinson, R. B., Jr. (1987). Emerging strategies in the venture capital industry. Journal of Business Venturing, 2(1), 53–77. Rothaermel, F. T., & Deeds, D. L. (2006). Alliance type, alliance experience and alliance management capability in high-technology ventures. Journal of Business Venturing, 21(4), 429–460. Roy, R., Lampert, C. M., & Stoyneva, I. (2018). When dinosaurs fly: The role of firm capabilities in the “avianization” of incumbents during disruptive technological change. Strategic Entrepreneurship Journal, 12(2), 261–284. Sarasvathy, S. D. (2004). The questions we ask and the questions we care about: Reformulating some problems in entrepreneurship research. Journal of Business Venturing, 19(5), 707–717. Saridakis, G., Marlow, S., & Storey, D. J. (2014). Do different factors explain male and female self-employment rates? Journal of Business Venturing, 29(3), 345–362. SAS Institute Inc. (2017). SAS® text miner 14.3: Reference help. Cary, NC: Author. http://documentation.sas.com/api/docsets/tmref/14.3/content/tmref .pdf?locale=en Schwienbacher, A. (2007). A theoretical analysis of optimal financing strategies for different types of capital-constrained entrepreneurs. Journal of Business Venturing, 22(6), 753–781. Scimago Journal & Country Rank. (2019). Journal rankings. https://www.scimagojr .com/journalrank.php?area=1400 Shane, S. (2000). Prior knowledge and the discovery of entrepreneurial opportunities. Organization Science, 11(4), 448–469. Shane, S. (2002). Executive forum: University technology transfer to entrepreneurial companies. Journal of Business Venturing, 17(6), 537–552. Shefrin, H. (2000). Beyond greed and fear: Understanding behavioral finance and the psychology of investing. Boston, MA: Harvard Business School Press. Short, J. C., Moss, T. W., & Lumpkin, G. T. (2009). Research in social entrepreneurship: Past contributions and future opportunities. Strategic Entrepreneurship Journal, 3(2), 161–194. Silge, J., & Robinson, D. (2017). Text mining with R: A tidy approach. Sebastopol, CA: O’Reilly Media. Simon, M., & Shrader, R. C. (2012). Entrepreneurial actions and optimistic overconfidence: The role of motivated reasoning in new product introductions. Journal of Business Venturing, 27(3), 291–309.
54 B. C. KONDUK Singal, M., & Singal, V. (2011). Concentrated ownership and firm performance: Does family control matter? Strategic Entrepreneurship Journal, 5(4), 373–396. Slotte-Kock, S., & Coviello, N. (2010). Entrepreneurship research on network processes: A review and ways forward. Entrepreneurship Theory and Practice, 34(1), 31–57. Sorrentino, M., & Williams, M. L. (1995). Relatedness and corporate venturing: Does it really matter? Journal of Business Venturing, 10(1), 59–73. Spinelli, S., & Birley, S. (1996). Toward a theory of conflict in the franchise system. Journal of Business Venturing, 11(5), 329–342. Srivastava, A., & Lee, H. (2005). Predicting order and timing of new product moves: The role of top management in corporate entrepreneurship. Journal of Business Venturing, 20(4), 459–481. Stubbart, C. I. (1989). Managerial cognition: A missing link in strategic management research. Journal of Management Studies, 26(4), 325–347. Sullivan, D. M., & Ford, C. M. (2014). How entrepreneurs use networks to address changing resource requirements during early venture development. Entrepreneurship Theory and Practice, 38(3), 551–574. Sun, S. L., & Im, J. (2015). Cutting microfinance interest rates: An opportunity co-creation perspective. Entrepreneurship Theory and Practice, 39(1), 101–128. Symeonidou, N., & Nicolaou, N. (2018). Resource orchestration in start-ups: Synchronizing human capital investment, leveraging strategy, and founder startup experience. Strategic Entrepreneurship Journal, 12(2), 194–218. Thorleuchter, D., & Van Den Poel, D. (2012). Predicting e-commerce company success by mining the text of its publicly-accessible website. Expert Systems With Applications, 39(17), 13026–13034. To, C., Kilduff, G. J., Ordoñez, L., & Schweitzer, M. E. (2018). Going for it on fourth down: Rivalry increases risk taking, physiological arousal, and promotion focus. Academy of Management Journal, 61(4), 1281–1306. Townsend, D. M., & Busenitz, L. W. (2008). Factor payments, resource-based bargaining, and the creation of firm wealth in technology-based ventures. Strategic Entrepreneurship Journal, 2(4), 339–355. Townsend, D. M., Busenitz, L. W., & Arthurs, J. D. (2010). To start or not to start: Outcome and ability expectations in the decision to start a new venture. Journal of Business Venturing, 25(2), 192–202. Ucbasaran, D., Westhead, P., Wright, M., & Flores, M. (2010). The nature of entrepreneurial experience, business failure and comparative optimism. Journal of Business Venturing, 25(6), 541–555. Unger, J. M., Rauch, A., Frese, M., & Rosenbusch, N. (2011). Human capital and entrepreneurial success: A meta-analytical review. Journal of Business Venturing, 26(3), 341–358. Vaghely, I. P., & Julien, P. A. (2010). Are opportunities recognized or constructed?: An information perspective on entrepreneurial opportunity identification. Journal of Business Venturing, 25(1), 73–86. Valliere, D. (2013). Towards a schematic theory of entrepreneurial alertness. Journal of Business Venturing, 28(3), 430–442.
Intersection of Entrepreneurship and Behavioral Strategy 55 Vanacker, T., Manigart, S., & Meuleman, M. (2014). Path-dependent evolution versus intentional management of investment ties in science-based entrepreneurial firms. Entrepreneurship Theory and Practice, 38(3), 671–690. Vanaelst, I., Clarysse, B., Wright, M., Lockett, A., Moray, N., & S’Jegers, R. (2006). Entrepreneurial team development in academic spinouts: An examination of team heterogeneity. Entrepreneurship Theory and Practice, 30(2), 249–271. Venkataraman, S. (1997). The distinctive domain of entrepreneurship research: An editor’s perspective. In J. Katz & R. Brockhaus (Eds.), Advances in entrepreneurship, firm emergence, and growth (pp. 119–138), Greenwich, CT: JAI Press. Vincent, W. S. (1998). Encroachment: Legal restrictions on retail franchise expansion. Journal of Business Venturing, 13(1), 29–41. Vissa, B., & Bhagavatula, S. (2012). The causes and consequences of churn in entrepreneurs’ personal networks. Strategic Entrepreneurship Journal, 6(3), 273–289. Welter, C., Mauer, R., & Wuebker, R. J. (2016). Bridging behavioral models and theoretical concepts: Effectuation and bricolage in the opportunity creation framework. Strategic Entrepreneurship Journal, 10(1), 5–20. Westhead, P., Wright, M., & Ucbasaran, D. (2001). The internationalization of new and small firms: A resource-based view. Journal of Business Venturing, 16(4), 333–358. Whittington, R. (1996). Strategy as practice. Long Range Planning, 29(5), 731–735. Wilson, F., Kickul, J., & Marlino, D. (2007). Gender, entrepreneurial self-efficacy, and entrepreneurial career intentions: Implications for entrepreneurship education. Entrepreneurship Theory and Practice, 31(3), 387–406. Wood, M. S., & Mckinley, W. (2017). After the venture: The reproduction and destruction of entrepreneurial opportunity. Strategic Entrepreneurship Journal, 11(1), 18–35. Wright, M., & Hitt, M. A. (2017). Strategic entrepreneurship and SEJ: Development and current progress. Strategic Entrepreneurship Journal, 11(3), 200–210. Wu, L. Y., Wang, C. J., Chen, C. P., & Pan, L. Y. (2008). Internal resources, external network, and competitiveness during the growth stage: A study of Taiwanese high–tech ventures. Entrepreneurship Theory and Practice, 32(3), 529–549. Yin, D., Mitra, S., & Zhang, H. (2016). When do consumers value positive vs. negative reviews? An empirical investigation of confirmation bias in online word of mouth. Information Systems Research, 27(1), 131–144. Zahra, S. A. (1991). Predictors and financial outcomes of corporate entrepreneurship: An exploratory study. Journal of Business Venturing, 6(4), 259–285. Zahra, S. A., Filatotchev, I., & Wright, M. (2009). How do threshold firms sustain corporate entrepreneurship? The role of boards and absorptive capacity. Journal of Business Venturing, 24(3), 248–260.
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CHAPTER 3
THE TEMPORALITIES OF ENTREPRENEURIAL RISK BEHAVIOR T. K. Das Bing-Sheng Teng
ABSTRACT Risk and risk behavior form an important segment of the entrepreneurship literature. Entrepreneurial risk behavior has been studied with both trait and cognitive approaches, but the findings do not adequately explain either how entrepreneurs differ from non-entrepreneurs, or how different types of entrepreneurs can be specified in terms of their risk behavior. This chapter is an attempt to address these issues by introducing two temporal attributes that we consider significant for understanding risk behavior, given that risk is intrinsically embedded in time. First, we discuss the notion of risk horizon, differentiating short-range risk from long-range risk. Second, we examine the risk behavior of entrepreneurs in terms of their individual future orientation, in tandem with their risk propensity. We propose a temporal framework which seeks to explain, at once, the different types of risk behavior among entrepreneurs as well as the distinction between entrepreneurs and nonentrepreneurs. The framework is also applied to networking and alliancing
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58 T. K. DAS and B. TENG activities of entrepreneurs. Finally, a number of propositions are developed to facilitate empirical testing of the insights implicit in the temporal framework of entrepreneurial risk behavior.
INTRODUCTION Risk is intrinsically embedded in time, and yet the temporal context continues to suffer from relative neglect in the research literature. Specifically, an individual’s conception of the flow of time in the future has a significant impact on entrepreneurial risk behavior. We propose that any entrepreneurial decision with risk connotations necessarily involves, implicitly and explicitly, two particular temporal attributes. The first relates to the risk horizon, or the span of time for which the entrepreneur assesses the risk. The second is concerned with the individual future orientation of the entrepreneur. In this chapter, we develop a framework for understanding entrepreneurial risk behavior with due recognition of the role of these two temporal aspects, in conjunction with the acknowledged role of risk propensity. Entrepreneurship has traditionally been defined as the “creation of new enterprises,” and the entrepreneur as “an organizer of an economic venture, especially one who organizes, owns, manages, and assumes the risk of a business” (Webster’s Third New International Dictionary, 1961). In recent decades, however, we have witnessed a major shift toward a firm-level orientation in entrepreneurship research (Covin & Slevin, 1991; Stevenson & Jarillo, 1990; Wales, 2016), evident in the proliferation of terms such as corporate entrepreneurship (Lerner, Zahra, & Kohavi, 2007; Stopford & Baden-Fuller, 1994), which refers to firms behaving in a proactive, innovative, and risk taking manner. It has been noted that the research focus has shifted away from the entrepreneur (Gartner, Shaver, Gatewood, & Katz, 1994; Shaver & Scott, 1991). This chapter is intended to support an interest in entrepreneurs, who supposedly behave differently from the rest of the population. Our contribution relates to an examination of the risk behavior of those who create new business ventures, and how that behavior may be better understood by incorporating two particular kinds of temporal dimensions. In the first section that follows, we briefly review the extant literature on entrepreneurial risk behavior, noting that both the trait and cognitive approaches cannot adequately differentiate between the risk behaviors of entrepreneurs and non-entrepreneurs. We propose that the temporal elements mentioned earlier may help in this regard. In the second section, we make the case for two types of entrepreneurial risk based on the idea of risk horizon, namely, short-range entrepreneurial risk and long-range entrepreneurial risk. These two temporal types of entrepreneurial risk are then employed, in the third section, to derive different risk behaviors that typify
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entrepreneurs and non-entrepreneurs. In the fourth section, we examine entrepreneurial risk behavior further by including two critical personality traits, namely, individual risk propensity and individual future orientation. In the fifth section, we discuss how our proposed framework may be applied in the areas of entrepreneurial networking and alliancing. A number of propositions based on the temporal framework are also developed to facilitate empirical testing. THE NATURE OF ENTREPRENEURIAL RISK BEHAVIOR Risk taking appears to be one of the most distinctive features of entrepreneurial behavior, since creating new ventures is by definition a risky business. Risk is conventionally defined as substantial variances in outcomes that are of consequence (MacCrimmon & Wehrung, 1986; Yates & Stone, 1992). According to Schumpeter (1934), the entrepreneur is a person who devises new combinations and innovations of products and services. A high failure rate for such innovations has been regarded as the rule rather than the exception. Failure of new ventures also greatly affects an entrepreneur’s financial well-being, career opportunity, and personal well-being (Kozan, Oksoy, & Ozsoy, 2012; Wiklund, Nikolaev, Shir, Foo, & Bradley, 2019; Wood & Rowe, 2011). On the one hand, entrepreneurial activities involve considerable investments, both financial and personal, so that a failure usually means enormous losses to the entrepreneur. On the other hand, the kind of wealth and personal fulfillment that a successful entrepreneurial attempt can bring is also much greater than normal. Given that so much is at stake in creating new ventures, it is no surprise that the subject of risk behavior should be at the heart of entrepreneurial behavior (Miller, 2007; Tipu, 2017). The literature seems to offer two main approaches to the study of entrepreneurial risk behavior, namely trait and cognitive. The Trait Approach The belief that entrepreneurs have distinctive personality characteristics has a long tradition in entrepreneurship studies, and research based on this premise is generally known as the trait approach. A number of psychological traits have been studied, in an attempt to differentiate entrepreneurs from non-entrepreneurs (see Brockhaus & Horwitz, 1986; Knörr, Alvarez, & Urbano, 2013; Leutner, Ahmetoglu, Akhtar, & Chamorro-Premuzic, 2014). Some of the more important ones include need for achievement (McClelland, 1965), locus of control (Mueller & Thomas, 2000), tolerance
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of ambiguity (Sexton & Bowman, 1985), and risk propensity (Begley & Boyd, 1987; Brockhaus, 1980; Glaser, Stam, & Takeuchi, 2016). Regarding risk propensity, it seems a natural presumption that a high degree of dispositional risk preference exists among entrepreneurs. Since “the entrepreneurial function involves primarily risk measurement and risk taking” (Palmer, 1971, p. 38, emphasis in original), it would seem to make sense to assume that entrepreneurs are inherently risk takers. In fact, Leibenstein (1968) regards the entrepreneur as “the ultimate uncertainty and/or risk bearer” (p. 74) and Gasse (1982) states that “this distinction between creating risk and risk-bearing fundamentally distinguishes between entrepreneurs and managers” (p. 60). In contrast to this view, McClelland (1961) has suggested that entrepreneurs actually have only a moderate level of risk propensity. The reason is that people with high need for achievement, such as entrepreneurs, would prefer to undertake tasks that are both challenging and achievable by employing their skills (McClelland, 1965). In this sense, people with moderate risk propensity are more likely to succeed in creating new businesses. Empirical evidence relating to risk behavior has been accumulating over some period, but the results seem to be weak and contradictory (Low & MacMillan, 1988; Sexton & Bowman, 1985). On the one hand, a few studies did report a higher risk propensity of entrepreneurs compared to non-entrepreneurs (e.g., Begley & Boyd, 1987; Sexton & Bowman, 1986; Stewart & Roth, 2001). On the other hand, some studies failed to find such a difference (Brockhaus, 1980; Sexton & Bowman, 1983; Smith & Miner, 1983). McClelland’s speculation that entrepreneurs are more moderate risk takers did not receive much empirical support either (Brockhaus, 1980; Litzinger, 1965). Given such inconsistent results, one possible explanation is that many of these empirical studies are not directly comparable, since they have used different definitions of entrepreneurs (Begley, 1995; Gartner, 1989). Thus, a manager in one study could have been classified as an entrepreneur in another. Also, measures of risk propensity were far from uniform. That being the situation, more consistent research methods are clearly needed (Ginsberg & Buchholtz, 1989). A different reaction to the inconclusive results is to suggest that there may be as much difference among entrepreneurs as between entrepreneurs and non-entrepreneurs (Gartner, 1985; Gruber & MacMillan, 2017). If so, then a typical entrepreneur may not exist and “who is an entrepreneur” may be a wrong question altogether (Gartner, 1989, p. 47). In this regard, a number of studies have proposed different entrepreneurial typologies. For instance, Webster (1977) has suggested five types of entrepreneurs (Cantillon, industry-maker, administrative, small business owner/operator, and independent), and Smith (1967) has differentiated between the craftsman entrepreneur and the opportunistic entrepreneur. Nevertheless,
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researchers have not adequately demonstrated how basic personality traits are linked with various entrepreneurial types (Woo, Cooper, & Dunkelberg, 1991), especially how risk behavior differs in each of these types. The Cognitive Approach Given the limited success with the trait approach, some researchers turned to a more cognition-oriented approach to studying entrepreneurial risk behavior (Keh, Foo, & Lim, 2002; Palich & Bagby, 1995; Peacock, 1986). The cognitive approach to risk behavior is common in management studies (Libby & Fishburn, 1977; March & Shapira, 1987, 1992; Shapira, 1995). In entrepreneurship, this approach was probably pioneered by Kirzner (1973, 1979), who advocated a theory of entrepreneurial alertness which examines entrepreneurs’ unique ability to discover and exploit opportunities that others fail to see. The cognitive approach attempts to understand how perceptions (Cooper, Woo, & Dunkelberg, 1988), decision making styles (Kaish & Gilad, 1991), heuristics (Manimala, 1992), biases (Busenitz & Barney, 1997), and intentions (Bird, 1988) of entrepreneurs affect their behavior (Shaver & Scott, 1991), including entrepreneurial risk behavior. Palich and Bagby’s (1995) study exemplifies how the cognitive approach can be used to account for the risk behavior of entrepreneurs. They have reported that entrepreneurs generally are not any more disposed to taking risks than non-entrepreneurs; instead, entrepreneurs simply perceive risky situations more optimistically than others. In other words, since entrepreneurs’ risk perceptions tend to be more optimistic, they are more willing to undertake those entrepreneurial efforts that others see as too risky. While both the trait approach and the cognitive approach reveal something important about the risk behavior of entrepreneurs, a deficiency in the existing literature is that the dependent variable we wish to understand (i.e., entrepreneurial risk behavior) is perhaps too simplistic, in the sense that the dichotomy of low-risk and high-risk behaviors may not by itself yield sufficient purchase on the phenomenon. We believe that part of the deficiency in the extant approaches to understanding the full range and complexity of entrepreneurial behavior can be attributed to our failure to incorporate the critically relevant factor of time. In the next section, we will differentiate between short-range risk and long-range risk, and see how this temporal refinement helps us to initially suggest two types of entrepreneurial risk. In the section following the next, we will utilize these two types of entrepreneurial risk to propose a temporal typology of entrepreneurial risk behavior, which at once also encompasses the risk behavior of non-entrepreneurs.
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TEMPORAL HORIZONS OF ENTREPRENEURIAL RISK It is generally agreed that time plays a crucial role in risk and risk behavior (Das & Teng, 2001; Lopes, 1996; Schneider & Lopes, 1986; Strickland, Lewicki, & Katz, 1966). Risk and uncertainty are essentially about the unpredictable futures, and they are therefore plainly embedded in time. Indeed, time seems to greatly complicate the already complicated concept of risk. In the words of Lopes (1987), “The temporal element is what gives risk both savor and sting” (p. 289). Psychologists have spent many years studying this temporal dimension (e.g., Nisan & Minkowich, 1973; Shelley, 1994; Tumasjan, Welpe, & Spörrie, 2013). Researchers have often observed that several risk behaviors are related to time. The risk-taking propensities of business executives, in particular, are likely to be associated with strategies that have long-range time horizons (Das & Teng, 2001). One important finding is called discounting in time (Vlek & Stallen, 1980), which is the tendency of individuals to undertake risks when possible gains are relatively immediate and possible losses are relatively in the distant future. In addition, Strickland et al. (1966) have reported that subjects tend to be more risk-averse if a gamble is presented in an after-the-event fashion, as compared to the usual before-the-game gamble. Lopes (1996), in addition, has highlighted differences in risk behavior according to whether the gamble is to be played just once or multiple times. While the above research findings speak to the importance of time in risk and risk behavior, we should note that time and the temporal dimension have not been adequately integrated into the conception of risk. For one thing, the bulk of the literature has not explicitly differentiated between short-range risk behavior and long-range risk behavior (Mowen & Mowen, 1991). Most studies on risk behavior implicitly cover only short-range risk (Kahneman & Tversky, 1979), while real-life risky decisions often unfold in the long run. This difference in time-spans of risk (Das, 2004) under consideration could have a profound impact on how risky alternatives are valued, as some studies have noted (e.g., Vlek & Stallen, 1980). Thus, we believe that it is important to make clear the specific temporal horizon of the risky decision. Short-Range Risk and Long-Range Risk Broadly defined, short-range risk refers to variances in outcomes in the near future, while long-range risk relates to variances in outcomes in the distant future (Drucker, 1972). Accordingly, short-range risk behavior is about taking or avoiding actions that may cause outcomes to vary significantly in the near future, from great gains to great losses; and long-range risk
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behavior is defined as taking or avoiding actions that may cause outcomes to vary significantly in the distant future. Low-risk behavior and high-risk behavior are the terms we will use to designate the two contrasting kinds of risk behavior. Thus, when people make decisions that are likely to evoke more extreme outcomes in the distant future, they are engaged in longrange risk behavior, either low-risk or high-risk. Examples of long-range risk taking may include long-term investment, not buying auto and medical insurance, smoking, and dropping out of school. Examples of short-range risk taking may include casino gambling, drinking and driving, and cheating in a test. The same individual may well exhibit low-risk behavior regarding long-range risk and high-risk behavior regarding short-range risk, or vice versa. For instance, many people take little risk with their long-term financial security, starting to save and invest early in life. The same individuals, though, could be aggressive investors in managing their personal investments in a high-risk fashion on a continuous, daily basis. Entrepreneurial Risk Types The time dimension has been the subject of study in a large number of disciplines (Das, 1990), and has been steadily gaining the attention of management scholars (Das, 1986; Kunisch, Bartunek, Mueller, & Huy, 2017). In keeping with this trend, fortunately, entrepreneurial research promises to play its due part (Bird, 1992; Petrakis, 2007). Applying the temporal dimension to entrepreneurial risk, we can differentiate between short-range and long-range entrepreneurial risk. Little has been explored in this direction after Kirzner (1973) discussed the issue of the short-run and the long-run in entrepreneurship from an economics perspective. An interesting notion has been proposed by Dickson and Giglierano (1986) in terms of two types of downside risk: sinking-the-boat risk and missing-the-boat risk. While sinking-the-boat risk refers to the “probability that the venture will fail to reach a satisfactory level of performance” (p. 61), missing-the-boat risk is the risk of failing to “undertake a venture that would have succeeded” (p. 58). Thus, sinking-the-boat risk is associated with the costs of pursuing a false opportunity, and missing-the-boat risk is linked with the costs of not pursuing a genuine opportunity, or opportunity cost of not making a potentially profitable move. While all decisions seem to involve these two types of risk, we believe that this dual conceptualization is particularly appropriate for appreciating entrepreneurial risk, because entrepreneurs are especially vulnerable to the missing-the-boat risk: Their first chance is often their last. Also, Dickson and Giglierano (1986) have stated that a critical difference between the two types of risk lies in time. Thus, this dual conceptualization can be further
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examined by mapping it onto the typology of short-range and long-range entrepreneurial risk. Short-Range Entrepreneurial Risk Certain risks involved in entrepreneurial activities are short-range in nature because they unfold rather quickly. One of such risks appears to be sinking-the-boat risk for a new venture, or the possibility that it may fail. In a new venture, sinking-the-boat risk would tend to be evident in the short run because a lack of financial slack and back-up makes new ventures particularly vulnerable to initial setbacks. Thus, if the initial performance turns out to be worse than the acceptable minimum, it would be very difficult for the entrepreneurial firm to continue its operations, whether or not the entrepreneur seeks external finance. As Dickson and Giglierano (1986) have pointed out, entrepreneurs often have only one shot in a given venture. They have suggested that sinking-the-boat risk is at its highest level at the initiation stage of a new venture, and that it starts to subside when the operations extend into a more distant future. Thus, sinking-the-boat risk will be a less intimidating prospect in the long run. In this sense, the risk of sinking the boat is particularly short-range in new ventures, as compared to more established companies. That is, established companies are less concerned about their “boat” sinking precipitously. Long-Range Entrepreneurial Risk Entrepreneurial activities are also exposed to risks that can be measured only in the long run. These risks may include the risk to the entrepreneurs’ personal relations and psychological well-being (Liles, 1974). In addition, we argue that missing-the-boat risk may well be a critical longrange entrepreneurial risk, because the opportunity cost of not pursuing an entrepreneurial career is usually not realized until much later. Since this risk is about what one might miss in the future, it naturally takes a more long-range orientation. As in the case of not going to college, the missing of an opportunity usually amounts to larger and larger losses as the future extends. In this sense, it has been suggested that the level of missingthe-boat risk keeps going up along the future time dimension (Dickson & Giglierano, 1986). Thus, we believe that dealing with missing-the-boat risk would be the major concern in long-range entrepreneurial risk behavior. In the next section, we apply the two types of temporally based entrepreneurial risk to propose two types of entrepreneurial risk behavior, along with non-entrepreneurial risk behavior.
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SHORT-RANGE AND LONG-RANGE RISK IN ENTREPRENEURIAL RISK BEHAVIOR So far we have discussed short-range and long-range entrepreneurial risk, and now we will apply the distinction to discuss entrepreneurial risk behavior. Entrepreneurship is widely regarded as risk taking because it is about greater gains and losses as compared to non-entrepreneurial activities. However, although risk taking may seem to differentiate entrepreneurial activities from many other activities, it does not follow that entrepreneurship is always about risk taking. In fact, not only has McClelland (1961) regarded entrepreneurial behavior as moderate risk taking, but others (e.g., Webster, 1977) also have suggested that some entrepreneurs may be more risk creators than risk takers. It seems plausible that not all entrepreneurs adopt similar risk behaviors, and that certain entrepreneurial functions actually involve risk avoiding. Indeed, it has been recognized for some time that entrepreneurial activities are of different types (Braden, 1977; Low & MacMillan, 1988). We postulate that as long as there are different types of entrepreneurship, there could be different types of entrepreneurial risk behavior, some of which may be more about short-range risk and others more about long-range risk. Types of Entrepreneurship: Craftsman and Opportunistic As we mentioned earlier, the literature reflects various typologies of entrepreneurs and entrepreneurship (Gartner, 1984; Webster, 1977). Braden (1977), for example, classified entrepreneurs as “caretakers” and “managers.” Smith (1967) has differentiated between the craftsman entrepreneur and the opportunistic entrepreneur, and it appears to be one of the few entrepreneurial typologies that have received some empirical support (Lessner & Knapp, 1974; Peterson & Smith, 1986; Smith & Miner, 1983), although the findings are far from conclusive (Woo et al., 1991). According to Smith (1967), a craftsman entrepreneur is characterized by narrowness in education and training, and low social awareness and involvement. Essentially, craftsman entrepreneurs are those who open mom-and-pop stores around the corner. These entrepreneurs usually do not offer products and services that are truly innovative; rather, they often provide conventional products and services in areas that are under-served. In contrast, an opportunistic entrepreneur is one who typically has breadth in education and training, as well as high social awareness and involvement. While the craftsman type of entrepreneurship involves providing conventional products/services to a new market base, the opportunistic
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type of entrepreneurship is associated with exploring new and novel products/services. Applying Kirzner’s (1973) theory of entrepreneurial alertness, Kaish and Gilad’s (1991) study found that, as compared to executives, entrepreneurs are more interested in discovering opportunities and the resources for exploiting them. These entrepreneurs seem to belong to the opportunistic type. Smith’s (1967) typology is primarily meant to distinguish different types of entrepreneurs, but it can well be extended to entrepreneurial activities. In other words, if there are different types of entrepreneurs, they would tend to behave differently, and indeed develop different kinds of entrepreneurial firms (Dunkelberg & Cooper, 1982; Smith & Miner, 1983). Adopting these two generic types1 of entrepreneurs, we now examine how they may differ in their risk behavior, keeping in mind our earlier temporal argument. Craftsman Entrepreneurs: Short-Range High-Risk Behavior The craftsman entrepreneurs seem to be more associated with shortrange risk taking, since they usually have “a limited time orientation” (Smith & Miner, 1983, p. 326). By definition, craftsmanship is about doing what one likes to do in the present, not so much about long-term planning such as building a successful organization (growth orientation). Such intentions are critical in determining the nature of entrepreneurial activities (Bird, 1988, 1992). Planning is not characteristic of craftsman entrepreneurs (Smith, 1967); they focus on the present time segment and are willing to take considerable risk in the short run, akin to the sinking-the-boat risk discussed earlier. Due to the nature of the businesses that craftsman entrepreneurs run (mostly standard product/service), the boat may sink rather quickly. Usually it is not about innovative products which may take a long time to reveal their potential and promise. For craftsman entrepreneurs, sinking-the-boat risk is an imminent eventuality. Thus, the willingness to take the initial high sinking-the-boat risk seems to differentiate craftsman entrepreneurs from non-entrepreneurs, especially those who also have the skills but do not dare to open their own shops in the face of this initial risk (see Figure 3.1, which, we should note here, also contains material to be developed in the next section). Since craftsman entrepreneurs are more likely to take short-term entrepreneurial risk, such as sinking-the-boat risk, the initial risk about a new venture would tend to be very high, but this risk would also tend to go down significantly afterwards (Dickson & Giglierano, 1986). By comparison, other types of entrepreneurs, for example, the opportunistic type, are less about sinking-the-boat risk because their objectives are projected
The Temporalities of Entrepreneurial Risk Behavior 67
Seeking
Risk Propensity
Averting
Future Orientation Near-Future
Distant-Future
Short-Range Low-Risk Behavior
Long-Range Low-Risk Behavior
Non-Entrepreneurs
Opportunistic Entrepreneurs
Cell 1
Cell 3
Short-Range High-Risk Behavior
Long-Range High-Risk Behavior
Craftsman Entrepreneurs
Non-Entrepreneurs
Cell 2
Cell 4
Figure 3.1 Entrepreneurial risk behavior based on risk horizon, future orientation, and risk propensity.
to be achieved over the long haul. The initial performance outcomes of craftsman entrepreneurs would reflect the type of risk they take. Thus, we propose that craftsman entrepreneurs can expect substantial performance variances in the short run. Hence: Proposition 1: Since craftsman entrepreneurs take short-range sinking-theboat risk, their initial performance outcomes will vary more from their goal, as compared to that of other types of entrepreneurs and of non-entrepreneurs. Opportunistic Entrepreneurs: Long-Range Low-Risk Behavior According to Smith (1967), opportunistic entrepreneurs develop plans for the long run and they consciously weigh options. They are preoccupied by the need to identify and pursue opportunities in the future that others fail to see or not dare to pursue. The term “opportunistic” does not mean that they would necessarily tend to take risks. We believe that the opportunistic type of entrepreneurs would tend to have risk averse propensities and exhibit long-range low-risk behavior because it is the missing-the-boat risk that they focus on.
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According to Dunkelberg and Cooper (1982, p. 4), some entrepreneurs are growth-oriented, in that they desire substantial growth of their businesses and strongly disagree that “a comfortable living is enough.” These entrepreneurs are typically of the opportunistic type, as they seem to be motivated primarily by a need to avoid downside variances in terms of their personal achievement in the long run. Thus, opportunistic entrepreneurs consciously plan for a more distant future as compared to craftsman entrepreneurs (Smith, 1967). “Don’t regret later because you did not try” seems to be the mindset of these entrepreneurs. Since opportunistic entrepreneurs are inclined toward action in the present in order not to regret missing the opportunity later on, they essentially eliminate or minimize missing-the-boat risk. Although opportunistic entrepreneurs may also take higher short-range risk than non-entrepreneurs, the key characteristic that distinguishes them from others would appear to be low-risk behavior over the longer range. Research has shown that, for most people, delayed losses are discounted more than delayed gains (Shelley, 1994). As a result, substantial losses in the long run appear less intimidating, and decision makers become more daring in taking risks with delayed outcomes as compared to immediate outcomes (Mowen & Mowen, 1991). In this sense, ordinary people seem to be more accustomed to taking long-range risks, such as missing-the-boat risk. It may be argued that opportunistic entrepreneurs are simply “more missing-theboat risk averse” (Dickson & Giglierano, 1986, p. 67). Furthermore, according to Dickson and Giglierano (1986, p. 63), missing-the-boat risk often results from being short-sighted. Thus, opportunistic entrepreneurs would be more immune to this risk since they consciously deal with it. In fact, Kirzner’s (1973, 1979) notion of entrepreneurial alertness stressed that entrepreneurship is about opportunity discovering (Kaish & Gilad, 1991). The long-term performance of opportunistic entrepreneurs will tend to reflect the risk-averting effect and show limited variances in their performance outcomes. Hence we propose: Proposition 2: Since opportunistic entrepreneurs avoid long-range missingthe-boat risk, their long-term performance outcomes will vary less from their goal, as compared to that of other types of entrepreneurs and of non-entrepreneurs. Non-Entrepreneurs: Short-Range Low-Risk Behavior and Long-Range High-Risk Behavior By comparison, non-entrepreneurs seem to be typified by either shortrange low-risk behavior or long-range high-risk behavior, depending on
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their respective risk propensities. Testing people’s bias in the prediction of future events, Milburn (1978) found that initially negative events were seen as more likely than positive events, while the relationship was reversed in the prediction of events farther into the future. This seems to support the idea that most people are more able to perceive downside risk in the nearfuture. It may explain why most people feel more comfortable with avoiding short-range risk. Non-entrepreneurs are more concerned about short-term loss (Kahneman & Lovallo, 1993). They stay away from entrepreneurship since self-employment usually involves extreme outcomes (especially loss) in the immediate future. By comparison, entrepreneurs, especially craftsman entrepreneurs, are willing to take significant short-range risk in order to do what they like to do. Thus, the short-term performance outcomes of these two groups of people would naturally differ significantly. For non-entrepreneurs, their short-term performance would not vary much from their short-term goal because they would mostly choose to play it safe. Hence: Proposition 3: Since non-entrepreneurs avoid short-range sinking-the-boat risk, their short-term performance outcomes will vary less from their goal, as compared to that of entrepreneurs. It can also be suggested that non-entrepreneurs take significant longrange risk since they may miss the boat altogether. In other words, not pursuing opportunities in the present is tantamount to taking missing-theboat risk in the long run. Vlek and Stallen (1980) have reported that people tend to take risks involving delayed losses. Thus, it can be assumed that most people are inclined to taking long-range risk, even though it means missing out on opportunities in the long run. Consider individuals who do not save throughout their career and expect their retirement needs to be met with some kind of windfall such as winning a lottery. In that case, they take very high long-range risk because they might miss most of the boats in their lives. Regarding possible outcomes, taking long-range risk means inviting more variance from one’s goal. If one takes long-term health risk by not exercising regularly, one’s health condition is likely to deviate much from one’s expectations in later years. For non-entrepreneurs, the idea is similar. Not willing to explore opportunities now (i.e., being opportunistic) often amounts to long-term performance that is far below one’s expectations. Hence: Proposition 4: Since non-entrepreneurs take long-range missing-the-boat risk, their long-term performance outcomes will vary more from their goal, as compared to that of entrepreneurs.
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FUTURE ORIENTATION AND RISK PROPENSITY IN ENTREPRENEURIAL RISK BEHAVIOR We have so far discussed entrepreneurial risk behavior in terms of the temporal dimension, which has enabled us to distinguish between entrepreneurial types (craftsman vs. opportunistic), as well as between entrepreneurs and non-entrepreneurs. In this section, we explore further what may be giving rise to these different types of risk behavior, that is, individual differences in their personality traits. Entrepreneurial research has traditionally emphasized the role played by personality traits in contributing to entrepreneurial behaviors (Carland, Hoy, Boulton, & Carland, 1984; Litzinger, 1965; Sexton & Bowman, 1986). Although criticism has been leveled against this approach (e.g., Gartner, 1989), it is our belief that certain personality traits do help account for behavior, and the key lies in identifying the more appropriate ones (Brockhaus & Horwitz, 1986). To that end, we suggest that individual risk propensity (Brockhaus, 1980) and future orientation (Das, 1986) are two personality traits pertinent to entrepreneurial risk behavior. Risk propensity seems to be a trait that is naturally tied with risk behavior, and considerable evidence suggests that persistent individual differences in risk propensity do exist (Bromiley & Curley, 1992; Brown, 1970; Kogan & Wallach, 1964). Existing studies have attempted to single out risk propensity as the sole psychological determinant of entrepreneurial risk behavior, with but limited success (Low & MacMillan, 1988). Kihlstrom and Laffont (1979), for example, implicitly assumed that the less risk-averse individuals become entrepreneurs, while the more risk-averse become laborers. In a study of Chinese CEOs, Opper, Nee, and Holm (2017) confirm “the importance of risk preferences in explaining strategic choices and performance effects” (p. 1504). In our view, risk propensity (averting or seeking) alone may not provide an adequate answer to the issue, especially when entrepreneurship is no longer regarded as risk taking only. We have already examined entrepreneurial risk behavior from one temporal perspective, namely, risk horizon. We will now introduce a further level of complexity by incorporating a second temporal variable, namely, individual future orientation. Future orientation is a personality trait that continues to be overlooked in entrepreneurial research. We will explore how the two kinds of temporal attributes jointly help determine entrepreneurial risk behavior. Future Orientations of Individuals Future orientation refers to individuals’ psychological attribute regarding their perception of the future and the flow of time (Cottle, 1976; Das,
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1986, 1987, 1991, 1993; Fraisse, 1963; Kastenbaum, 1961; Klineberg, 1968).2 Some people are more future oriented in that they pay more attention to what may happen in a relatively distant future. Others are more presenttime oriented in that they are preoccupied with the immediate future. This future time perspective tends to be fairly stable for a person, and is thus regarded as a psychological trait that reflects the person’s psychological ability and focus in perceiving the flow of time. In other words, people can be differentiated by their ability to envision and “grasp” the future. It has been found that some people are more able to “see” a distant future than others, and are comfortable envisioning what might happen far into the future (Das, 1986). To them, even events in the distant-future are psychologically possible and real in the phenomenal world of undulating time. These people are thus categorized as having a distant-future orientation. In contrast, other people are psychologically attached to present-time thinking and are not used to envisioning a distant future. To them, the immediate future means more or less all that there is in the future-time segment. Thus, instead of seeing a plethora of future events, these individuals view themselves as advancing into a relatively limited future-time segment. These individuals can be said to have a near-future orientation. It must be noted that future orientation is about psychological time rather than clock time or calendar time (Das, 1991). While clock time and calendar time are involved in making fast decisions and expanding planning horizons, psychological time is more about the relationship of the past, present, near-future, and distant-future—all perceived in the fleeting present. Future orientation is essentially an individual’s subjective experience and “grasp” of the time-flow in the future, and is minimally relevant to clock time or calendar time. Thus, it is the relative cognitive dominance of the distant-future over the near-future that characterizes a person with a distant-future orientation. In terms of the relevance of this individual future orientation, Das (1986) found a statistically significant relationship between the future orientations of business executives and their preferences for planning horizons. Distant-future oriented executives were found to be more inclined towards long-range planning than their near-future oriented compatriots in the same organization. This finding simply reinforces the general idea that behavior in the work arena finds its partial roots in personality traits. We now proceed to an examination of entrepreneurial risk behavior in relation to the two personality traits of future orientation and risk propensity. Near-Future Orientation When an individual has a near-future orientation and a risk propensity that tends toward averting risk, he or she is unlikely to be an entrepreneur
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(see Cell 1 in Figure 3.1). We argued earlier that some non-entrepreneurs are characterized by short-range low-risk behavior, or an unwillingness to take initial risks associated with entrepreneurial activities (Proposition 3). That behavior can be easily explained by their risk propensity and future orientation. First of all, since these individuals have a risk averting propensity, they would be more inclined toward low-risk behavior, that is, avoiding alternatives that may cause outcomes to vary too much from their expectations. Secondly, a near-future orientation means that these individuals would focus on short-term options, or those with short-range risks. Given a near-future orientation, these individuals would tend not to consciously ponder long-range risks, so that their risk propensity may not be operative in determining their long-range risk behavior. Since such individuals are most likely to make short-term decisions that would preclude much performance variance, an entrepreneurial career seems an unlikely choice. Thus: Proposition 5: Individuals with a near-future orientation and a risk averting propensity are less likely to be entrepreneurs. Individuals with a near-future orientation and a risk seeking propensity, however, are more likely to be craftsman entrepreneurs (Cell 2). Being near-future oriented, short-range risk is the type of risk that they would attempt to deal with. Meanwhile, due to their risk seeking propensity, it is natural that these individuals would be quite willing to take rather significant risks. As we argued earlier, craftsman entrepreneurs are characterized by short-range risk bahavior (Proposition 1), and this is in line with Smith and Miner’s (1983, p. 326) observation that craftsman entrepreneurs usually have “a limited time orientation,” or, in our terminology, a near-future orientation. Thus: Proposition 6: Individuals with a near-future orientation and a risk seeking propensity are more likely to be craftsman entrepreneurs. Distant-Future Orientation Individuals with a distant-future orientation tend to be concerned more with the long run rather than the present. Thus, their personal predilection is mostly reflected in long-range risk behavior. It does not mean that these people do not take or avoid short-range risk; rather, the idea is that their risk propensity may not affect their short-range risk behavior too much due to a relative neglect of the short-run. For these individuals, their risk propensity is operative mainly in regard to long-range risk.
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Thus, if the individual is risk averse, he or she would be of the longrange low-risk type (Cell 3). Our earlier discussion identified long-range risk avoiding with opportunistic entrepreneurs, since they are mostly concerned with missing-the-boat risk in the long run (Proposition 2). This is supported by Smith and Miner (1983, p. 326), who stated that opportunistic entrepreneurs exhibit “an awareness of, and orientation to, the future” (p. 326). Therefore: Proposition 7: Individuals with a distant-future orientation and a risk averting propensity are more likely to be opportunistic entrepreneurs. On the other hand, if distant-future oriented individuals have a risk seeking propensity, they are unlikely to be entrepreneurs (Cell 4). A risk seeking propensity along with a distant-future orientation lead to long-range risk taking, which we have argued to be a characteristic of non-entrepreneurs (Proposition 4), or those who are willing to put their long-term welfare at risk. The type of long-range risk that they are exposed to is mainly missingthe-boat risk. Thus, Proposition 8: Individuals with a distant-future orientation and a risk seeking propensity are less likely to be entrepreneurs. We might add that the framework can be used to predict, on the basis of the two dimensions of future orientation and risk propensity, the career alternatives of being non-entrepreneurs, craftsman entrepreneurs, or opportunistic entrepreneurs. In the case of non-entrepreneurs, Cell 1 and Cell 4 represent two different types. Individuals in Cell 1 are concerned with avoiding short-term losses, so that they would be less likely to pursue a career of self-employment. Laborers who prefer stable incomes in the short run exemplify this type. In contrast, individuals included in Cell 4 are those who would choose not to be engaged in entrepreneurial activities because they do not care much about missing opportunities in the long run, that is, those who would consciously decide to undertake a missing-the-boat risk. And, of course, craftsman entrepreneurs (Cell 2) are those who would prefer to take the immediate, sinking-the-boat risk in order to meet their relatively short-range goals, such as doing what they like to do in the present, while opportunistic entrepreneurs (Cell 3) would focus on avoiding long-range missing-the-boat risk. Looking at the framework horizontally, we also observe that whereas opportunistic entrepreneurs (Cell 3) are able to appreciate long-range risks (being distant-future oriented) arising from not pursuing entrepreneurial activities (missing-the-boat risk), those in Cell 1 fail to perceive such longrange risks (being limited by their near-future orientation). Along similar
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lines, craftsman entrepreneurs (Cell 2), being near-future oriented, are likely to be attracted by an entrepreneurial career that promises to provide them with what they want in the short run (e.g., being their own boss). By comparison, some non-entrepreneurs (Cell 4), not being near-future oriented, would tend not to value such immediate outcomes. In sum, the discussion of the characteristics of the four cells of the temporal framework, the various propositions, and the comparisons of each cell with all the others, seem in their totality to convey a coherent and comprehensive picture of the risk behaviors of entrepreneurs and non-entrepreneurs. ENTREPRENEURIAL NETWORKING AND ALLIANCING As an illustration of how the proposed temporal framework of entrepreneurial risk behavior can be potentially applied to different areas, we discuss its relevance to networking and alliancing activities in entrepreneurship. Cooperative linkages such as networks and strategic alliances are especially important for the entrepreneurial process, due to a lack of established internal resources (Das & He, 2006; Dubini & Aldrich, 1991). By definition, “networks are associations of individuals or groups that facilitate access to information or resources” (Holt, 1987, p. 44), while strategic alliances are defined as more integrative forms of interfirm cooperation such as joint ventures and joint R&D (Das & Teng, 1996; Golden & Dollinger, 1993). Networking and alliancing can help entrepreneurs get needed access and connections that are not available from other sources (Das & Teng, 1998a; Hansen, 1995). For example, firms in the biotechnology industry have significantly benefited in their innovation and new product development activities through interfirm cooperation (Deeds & Hill, 1996; Shan, Walker, & Kogut, 1994). In their review article, Low and MacMillan (1988) noted that network theories are increasingly being applied to entrepreneurship research. Over the years, a considerable number of studies have been carried out in this area (Slotte-Kock & Coviello, 2010), covering topics such as informal networks (Birley, 1985; Johannisson, 1987), formal networks (Holt, 1987), strategic alliances among small firms (Borch & Huse, 1993; Larson & Starr, 1993), and entrepreneurial networking growth (Hansen, 1995) and performance (Larson, 1991). However, researchers have not so far examined the relationship between entrepreneurial risk behavior and entrepreneurial networking and alliancing. According to Golden and Dollinger (1993), different cooperative linkages may be used by different types of small firms. Using the same logic, we argue that the type of networks being used (informal vs. formal) and the involvement in strategic alliances may be examined in the light of various types of entrepreneurial risk behavior that we have discussed above.
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Informal Versus Formal Entrepreneurial Networks The literature suggests two types of entrepreneurial networks in terms of their distinctive sources: informal and formal (Birley, 1985; Johannisson, 1987). While informal entrepreneurial networks consist of personal friends, families, and business contacts, formal networks include associations with venture capitalists, banks, accountants, lawyers, creditors, and trade associations. For example, borrowing money from relatives in order to open a barber shop is informal networking, while seeking venture capital can be seen as joining a formal entrepreneurial network. The key difference is that informal networks start with personal relationships so that they are essentially trust-based organizing vehicles. In contrast, formal networks are based on business contracts and agreements, with clear rights and obligations for each involved party. Regarding the use of the two types, Birley (1985) has reported that entrepreneurs primarily used informal networks, and turned to formal networks only after their firms were in an established position. Craftsman Entrepreneurs and Networking Given the difference between formal and informal networks, we suggest that craftsman entrepreneurs are more likely to rely on informal networks than on formal networks. The reason is that craftsman entrepreneurs tend to take short-range risks. In our view, it is short-range risk taking if one mainly relies on personal connections to start a new business, since entrepreneurial risks would be internalized by this inner circle and not shared by external people such as venture capitalists. Furthermore, there is additional performance risk associated with informal entrepreneurial networks. Since informal networks are characterized by interpersonal trust, reciprocity, reputation, and so on (Larson, 1991, 1992), sufficient controls such as business contracts would not be used to monitor the relationships. It is generally agreed among theorists that trusting without sufficient control is equivalent to risk taking (Das & Teng, 1998b, 2004; Mayer, Davis, & Schoorman, 1995). As compared to the opportunistic type, the craftsman type would be more willing to expose themselves to this type of short-range entrepreneurial risk. Because of the willingness to take short-range risk, when it comes to financing a new venture, craftsman entrepreneurs would tend to commit their own money, or money borrowed from family, friends, and so on, instead of raising money from venture capitalists or banks, so that they remain relatively free to do what they want. Smith (1967) described a craftsman who states: “I don’t want to grow too rapidly because I can easily use up my working capital and when this is gone the banks get control” (p. 27).
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This kind of resistance to formal networks seems to be characteristic of craftsman entrepreneurs. In addition to the foregone risk aspect, another reason that craftsman entrepreneurs may rely more on informal networks is their incompetence in dealing with a broad social environment (Smith & Miner, 1983). Smith (1967) described them as having low social awareness and involvement, a fact also contributing to the reliance on informal entrepreneurial networks. Thus: Proposition 9: Craftsman entrepreneurs will rely more on informal networks than on formal networks. Opportunistic Entrepreneurs and Networking Formal networks comprising venture capitalists and trade associations actively seek to provide support for new ideas that promise higher-thanaverage returns. Since opportunistic entrepreneurs also constantly look for new opportunities untapped by the market, there seems to be a fit between formal networks and opportunistic entrepreneurs. First, the types of opportunities that opportunistic entrepreneurs attempt to explore usually are not about opening a mom-and-pop store. Informal networks may not be adequately bountiful in terms of providing needed financial and knowledge resources. Second, and more importantly, in contrast to craftsman entrepreneurs, opportunistic entrepreneurs tend to engage in long-range lowrisk behavior. Thus, they are highly motivated to minimize their personal risk through involving outside sources. While financing a new venture by an entrepreneur is highly risky, a sharing of this risk with formal networks makes the enterprise fairly attractive (Amit, Glosten, & Muller, 1990). Thus, opportunistic entrepreneurs often join formal networks, with strong reliance on contractual agreements and monitoring mechanisms. Hence: Proposition 10: Opportunistic entrepreneurs will rely more on formal networks than on informal networks. Entrepreneurs and Strategic Alliances Besides networking, strategic alliances provide entrepreneurs another means to access others’ resources and quickly build up their own operation. Strategic alliances are more intensive in terms of interfirm cooperation than networks, since alliance partners are expected to work together for explicit strategic objectives. Often formed by firms in the same industry,
The Temporalities of Entrepreneurial Risk Behavior 77
strategic alliances tend to have a relatively high level of interfirm integration. It is interesting to note that the number of entrepreneurial firms involved in strategic alliances is proportionately much less than established companies. Most of the entrepreneurial firms appear to shy away from a seemingly sensible alliancing strategy. Based on our time-risk framework, we would suggest that strategic alliances pose the kind of opportunities and threats that seem incompatible with the risk behavior of entrepreneurs (see also Das, 2006). On the one hand, strategic alliances offer valuable opportunities to entrepreneurial firms in the short run, in that startups can always use some help from more established firms. An alliance with a prestigious firm often quickly brings about needed reputation for the startup firm itself. Considering that most startups are less than well-known, strategic alliances do serve as a stepping stone for them (Das & He, 2006). It is in this sense that strategic alliances can be viewed as a means to “buffer small firms from environmental uncertainty” (Golden & Dollinger, 1993, p. 44), and thus avoid short-range entrepreneurial risk (e.g., sinking-the-boat risk). First, by forming an alliance with a larger company, startups can significantly reduce the risk of bankruptcy in the short run. Dealership and supplier relationships are just two such examples. Second, through strategic alliances entrepreneurial firms can become more able to expeditiously capitalize on opportunities that otherwise they would have had to let go, at least in the short run. In brief, it seems that strategic alliances call for short-range lowrisk behavior on the part of startup firms. On the other hand, strategic alliances may be hazardous for entrepreneurial firms in the long run, if the alliance becomes an interim and covert cover for future acquisitions and manipulations by larger firms (Bleeke & Ernst, 1995). In fact, many established firms harbor hidden agendas when they form alliances with startups, and that is why some researchers have warned against such arrangements (Das & Teng, 1997). Over the long run, it is possible that the new startup becomes so embedded in a cooperative arrangement that it may find it difficult to survive on its own. If so, strategic flexibility may be sacrificed and long-term performance put in jeopardy (Lumpkin & Brigham, 2011). In this sense, it can be argued that strategic alliances often mean risk taking in the long run for entrepreneurial firms. As we have argued before (see Figure 3.1), entrepreneurs are more likely to exhibit short-range high-risk behavior or long-range low-risk behavior. Since strategic alliances offer two situations that are less compatible with entrepreneurial risk behavior, it is not surprising that many entrepreneurs do not pursue this option. Thus: Proposition 11: Entrepreneurial firms are less likely to be involved in strategic alliances than more established firms.
78 T. K. DAS and B. TENG
CONCLUDING REMARKS Entrepreneurial risk behavior has been examined in the literature by both the personality trait approach and the cognitive approach. Neither approach, however, has thus far yielded convincing evidence explaining entrepreneurial risk behavior in a parsimonious manner. Even the basic distinction between entrepreneurs and non-entrepreneurs does not seem to have been satisfactorily explained in terms of risk behavior. In particular, a comprehensive typology that encompasses different kinds of entrepreneurs along with non-entrepreneurs, based on risk behavior, has not been developed. In this chapter, we have proposed a framework which attempts to do this by incorporating two kinds of temporal attributes. We have based our effort in the conviction that risk is intrinsically embedded in time, coupled with the finding that the temporal context has thus far remained largely neglected (along with the lack of attention to other key dimensions of the broader entrepreneurial context, as argued by Welter, 2011; Zahra, Wright, & Abdelgawad, 2014; among others, in support of the contextualization of entrepreneurship research). The first contribution of this chapter lies in introducing the notion of risk horizon, leading to a differentiation between short-range entrepreneurial risk and long-range entrepreneurial risk. This essentially recognizes that not all entrepreneurial risks have the same temporal context; some are more about the immediate future and others unfold only in the long run. The concepts of sinking-the-boat risk and missing-the-boat risk were used to illustrate the new insights gained from this temporal differentiation. The second contribution is in explaining and developing different entrepreneurial types by employing their distinct risk behavior in the short run and in the long run. We have suggested that craftsman entrepreneurs can be identified by their short-range high-risk behavior, while opportunistic entrepreneurs by their long-range low-risk behavior. Along the same lines, non-entrepreneurs can be distinguished by either short-range lowrisk behavior or long-range high-risk behavior. Such a framework answers directly the basic question in the literature: Are entrepreneurs more risk taking than non-entrepreneurs? Our answer, clearly, is a contingent one: It depends on the risk horizon; namely, whether it is about short-range risk or long-range risk. In other words, it helps us understand why not all entrepreneurs are about risk taking. Additionally, this temporally based risk perspective helps us better appreciate how entrepreneurial activities differ from non-entrepreneurial activities. Thirdly, our framework also explores the role of a second temporal attribute in entrepreneurial risk behavior, namely, individual future orientation. Given that individuals may have either a risk averting or a risk seeking propensity, we have combined risk propensity with future orientation to
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enrich and reinforce the temporal framework with additional elements in our attempt to explain different types of entrepreneurs and to distinguish between entrepreneurs and non-entrepreneurs. Essentially, craftsman entrepreneurs would tend to be near-future oriented and have a risk seeking propensity, while opportunistic entrepreneurs would tend to be distant-future oriented and have a risk averting propensity. The non-entrepreneurs, in our framework, would be characterized by the two pairings of risk averting propensity with near-future orientation and risk seeking propensity with distant-future orientation. It should be recognized, of course, that our framework essentially adopts the trait approach in studying entrepreneurial risk behavior. As we noted at the outset, the other major approach is cognitive, which examines the effects of cognitive biases and heuristics on entrepreneurial risk behavior. One limitation of the framework is that it leaves out the potential role of cognitive elements. For instance, differences in risk behavior between entrepreneurs and non-entrepreneurs have sometimes been attributed to differences in the perceptions of risk. It may be worthwhile to develop a more sophisticated temporal framework by incorporating both pertinent cognitive elements and insights from other disciplines (Ireland & Webb, 2007). Finally, we have discussed how our temporal framework can be applied to the emerging topics of entrepreneurial networking and alliancing, demonstrating that this framework, and perhaps other temporal refinements of it, has the potential for the study of a wide range of topics. Thus, one direction for future research would be to apply the framework to other topics in entrepreneurship, such as long-term growth of new ventures, entrepreneurial education and training, and the intersection of risk propensity, temporal orientation, and perceived decision context among different types of entrepreneurs and non-entrepreneurs. But beyond that, we hope that our effort encourages renewed attention to contingent approaches to entrepreneurial risk behavior and its temporal context in the overall enterprise of understanding entrepreneurial behavior. NOTES 1. It is important to note that we are adopting this typology, flawed as it is (Woo et al., 1991), for its widespread presence in the literature, as that would facilitate appreciation of the role of the time dimension (both the risk horizon aspect discussed in this section and the psychological individual future orientation to be introduced later) in understanding the postulated risk behaviors of different types of entrepreneurs as well as non-entrepreneurs. Thus, Smith’s (1967) typology is used here to merely illustrate the potential role of the two temporal dimensions in studying risk behaviors; we do not attempt to critique any typology in this chapter. Obviously, an assessment of the ro-
80 T. K. DAS and B. TENG bustness of these hitherto unexplored temporal roles in risk behavior has to await empirical investigation. We cannot resist speculating, though, that such empirical testing might help in at least partially explaining, if only as a byproduct, the lack of definitive support for the craftsman-opportunist typology, because of the possible presence of respondents who should properly be considered as non-entrepreneurs under our temporally refined framework. This “contamination” of the entrepreneurial samples, which are based on self-reported goals (e.g., Braden, 1977, p. 54) that are probably attractive to all and sundry respondents, can be eliminated by identifying and weeding out the non-entrepreneur respondents using our temporal template. 2. We should clarify that we refer to these studies as a foundation to argue for a role for individual future orientation in individual (here, entrepreneurial) risk behavior. Unfortunately, there are no empirical studies, other than Das (1986, 1987), that employ the individual future orientation construct in the management and organization area (see, for instance, the article by Thoms and Greenberger [1995]). In examining the intersection of time and entrepreneurial behavior, it is important to keep in mind the individualistic focus (hence psychological time) of the construct of individual future orientation. This is crucial to appreciate upfront, so that one does not expect a simplistic tie-in with the predominantly linear conception of time in the management and organization literature. It is thus important not to hark to the publications in the literature which conceive of time unquestioningly as a constant for all individuals. In this regard, we should like to suggest that researchers need to seriously consider moving away from discussing the “future” and other time topics relating to the essentially subjective process of human decision making in objective, non-problematic, constant, linear, clock-and-calendar-time terms.
ACKNOWLEDGMENT This chapter, save some minor revisions and updating, was earlier published as Das, T. K., & Teng, B. (1997). Time and entrepreneurial risk behavior. Entrepreneurship Theory and Practice, 22(2), 69–88. REFERENCES Amit, R., Glosten, L., & Muller, E. (1990). Entrepreneurial ability, venture investments, and risk sharing. Management Science, 36(10), 1232–1245. Begley, T. M. (1995). Using founder status, age of firm, and company growth as the basis for distinguishing entrepreneurs from managers of smaller businesses. Journal of Business Venturing, 10(3), 249–263. Begley, T. M., & Boyd, D. P. (1987). Psychological characteristics associated with performance in entrepreneurial firms and smaller businesses. Journal of Business Venturing, 2(1), 79–93.
The Temporalities of Entrepreneurial Risk Behavior 81 Bird, B. J. (1988). Implementing entrepreneurial ideas: The case for intention. Academy of Management Review, 13(3), 442–453. Bird, B. J. (1992). The operation of intentions in time: The emergence of the new venture. Entrepreneurship Theory and Practice, 17(1), 11–20. Birley, S. (1985). The role of networks in the entrepreneurial process. Journal of Business Venturing, 1(1), 107–117. Bleeke, J., & Ernst, D. (1995). Is your strategic alliance really a sale? Harvard Business Review, 73(1), 97–105. Borch, O. J., & Huse, M. (1993). Informal strategic networks and the board of directors. Entrepreneurship Theory and Practice, 18(1), 23–36. Braden, P. (1977). Technological entrepreneurship. Ann Arbor: University of Michigan. Brockhaus, R. H., Sr. (1980). Risk taking propensity of entrepreneurs. Academy of Management Journal, 23(3), 509–520. Brockhaus, R. H., Sr., & Horwitz, P. S. (1986). The psychology of the entrepreneur. In D. L. Sexton & R. W. Smilor (Eds.), The art and science of entrepreneurship (pp. 25–48). Cambridge, MA: Ballinger. Bromiley, P., & Curley, S. P. (1992). Individual differences in risk taking. In J. F. Yates (Ed.), Risk-taking behavior (pp. 87–132). Chichester, England: Wiley. Brown, J. S. (1970). Risk propensity in decision making: A comparison of business and public school administrators. Administrative Science Quarterly, 15(4), 473–481. Busenitz, L. W., & Barney, J. B. (1997). Differences between entrepreneurs and managers in large organizations: Biases and heuristics in strategic decisionmaking. Journal of Business Venturing, 12, 9–30. Carland, J. W., Hoy, F., Boulton, W. R., & Carland, J. A. C. (1984). Differentiating entrepreneurs from small business owners: A conceptualization. Academy of Management Review, 9(2), 354–359. Cooper, A. C., & Woo, C. Y., & Dunkelberg, W. C. (1988). Entrepreneurs’ perceived chances for success. Journal of Business Venturing, 3(2), 97–108. Cottle, T. J. (1976). Perceiving time: A psychological investigation with men and women. New York, NY: Wiley. Covin, J. G., & Slevin, D. P. (1991). A conceptual model of entrepreneurship as firm behavior. Entrepreneurship Theory and Practice, 16(1), 7–24. Das, T. K. (1986). The subjective side of strategy making: Future orientations and perceptions of executives. New York, NY: Praeger. Das, T. K. (1987). Strategic planning and individual temporal orientation. Strategic Management Journal, 8(2), 203–209. Das, T. K. (1990). The time dimension: An interdisciplinary guide. New York, NY: Praeger. Das, T. K. (1991). Time: The hidden dimension in strategic planning. Long Range Planning, 24(3), 49–57. Das, T. K. (1993). Time in management and organizational studies. Time & Society, 2(2), 267–274. Das, T. K. (2004). Time-span and risk of partner opportunism in strategic alliances. Journal of Managerial Psychology, 19(8), 744–759. Das, T. K. (2006). Strategic alliance temporalities and partner opportunism. British Journal of Management, 17(1), 1–21.
82 T. K. DAS and B. TENG Das, T. K., & He, I. Y. (2006). Entrepreneurial firms in search of established partners: Review and recommendations. International Journal of Entrepreneurial Behaviour & Research, 12(3), 114–143. Das, T. K., & Teng, B. (1996). Risk types and inter-firm alliance structures. Journal of Management Studies, 33, 827–843. Das, T. K., & Teng, B. (1997). Sustaining strategic alliances: Options and guidelines. Journal of General Management, 22(4), 49–64. Das, T. K., & Teng, B. (1998a). Resource and risk management in the strategic alliance making process. Journal of Management, 24(1), 21–42. Das, T. K., & Teng, B. (1998b). Between trust and control: Developing confidence in partner cooperation in alliances. Academy of Management Review, 23(3), 491–512. Das, T. K., & Teng, B. (2001). Strategic risk behavior and its temporalities: Between risk propensity and decision context. Journal of Management Studies, 38(4), 515–534. Das, T. K., & Teng, B. (2004). The risk-based view of trust: A conceptual framework. Journal of Business and Psychology, 19(1), 85–116. Deeds, D. L., & Hill, C. W. L. (1996). Strategic alliances and the rate of new product development: An empirical study of entrepreneurial firms. Journal of Business Venturing, 11(1), 41–55. Dickson, P. R., & Giglierano, J. J. (1986). Missing the boat and sinking the boat: A conceptual model of entrepreneurial risk. Journal of Marketing, 50(3), 58–70. Drucker, P. F. (1972). Long-range planning means risk-taking. In D. W. Ewing (Ed.), Long-range planning for management (3rd ed.; pp. 3–19). New York, NY: Harper & Row. Dubini, P., & Aldrich, H. (1991). Personal and extended networks are central to the entrepreneurial process. Journal of Business Venturing, 6(5), 305–313. Dunkelberg, W. C., & Cooper, A. C. (1982). Entrepreneurial typologies: An empirical study. In K. H. Vesper (Ed.), Frontiers of Entrepreneurship Research: The proceedings of the Babson Conference on entrepreneurship research (pp. 1–15). Wellesley, MA: Babson College. Fraisse, P. (1963). The psychology of time. New York, NY: Harper. Gartner, W. B. (1984). Problems in business startup: The relationships among entrepreneurial skills and problem identification for different types of new ventures. In J. A. Hornaday, F. Tarpley, J. A. Timmons, & K. H. Vesper (Eds.), Frontiers of entrepreneurship research: The proceedings of the Babson Conference on entrepreneurship research (pp. 496–512). Wellesley, MA: Babson College. Gartner, W. B. (1985). A conceptual framework for describing the phenomenon of new venture creation. Academy of Management Review, 10(4), 696–706. Gartner, W. B. (1989). “Who is an entrepreneur?” is the wrong question. Entrepreneurship Theory and Practice, 13(4), 47–68. Gartner, W. B., Shaver, K. G., Gatewood, E., & Katz, J. A. (1994). Finding the entrepreneur in entrepreneurship. Entrepreneurship Theory and Practice, 18(3), 5–9. Gasse, Y. (1982). Elaborations on the psychology of the entrepreneur. In C. A. Kent, D. L. Sexton, & K. H. Vesper (Eds.), Encyclopedia of entrepreneurship (pp. 57– 71). Englewood Cliffs, NJ: Prentice-Hall.
The Temporalities of Entrepreneurial Risk Behavior 83 Ginsberg, A., & Buchholtz, A. (1989). Are entrepreneurs a breed apart? A look at the evidence. Journal of General Management, 15(2), 32–40. Glaser, L., Stam, W., & Takeuchi, R. (2016). Managing the risks of proactivity: A multilevel study of initiative and performance in the middle management context. Academy of Management Journal, 59(4), 1339–1360. Golden, P. A., & Dollinger, M. (1993). Cooperative alliances and competitive strategies in small manufacturing firms. Entrepreneurship Theory and Practice, 17(4), 43–56. Gruber, M., & MacMillan, I. C. (2017). Entrepreneurial behavior: A reconceptualization and extension based on identity theory. Strategic Entrepreneurship Journal, 11(3), 271–286. Hansen, E. L. (1995). Entrepreneurial networks and new organization growth. Entrepreneurship Theory and Practice, 19(4), 7–19. Holt, D. (1987). Network support systems: How communities can encourage entrepreneurship. In N. C. Churchill, J. A. Hornaday, B. A. Kirchhoff, O. J. Krasner, & K. H. Vesper (Eds.), Frontiers of entrepreneurship research: The proceedings of the Babson Conference on entrepreneurship research (pp. 44–56). Wellesley, MA: Babson College. Ireland, R. D., & Webb, J. W. (2007). A cross-disciplinary exploration of entrepreneurship research. Journal of Management, 33(6), 891–927. Johannisson, B. (1987). Anarchists and organizers: Entrepreneurs in a network perspective. International Studies of Management and Organization, 17(1), 49–63. Kahneman, D., & Lovallo, D. (1993). Timid choices and bold forecasts: A cognitive perspective on risk taking. Management Science, 39(1), 17–31. Kahneman, D., & Tversky, A. (1979). Prospect theory: An analysis of decisions under risk. Econometrica, 47(2), 262–291. Kaish, S., & Gilad, B. (1991). Characteristics of opportunities search of entrepreneurs versus executives: Sources, interests, general alertness. Journal of Business Venturing, 6(1), 45–61. Kastenbaum, R. (1961). The dimensions of future time perspective: An experimental analysis. Journal of General Psychology, 65(2), 203–218. Keh, H. T., Foo, M. D., & Lim, B. C. (2002). Opportunity evaluation under risky conditions: The cognitive processes of entrepreneurs. Entrepreneurship Theory and Practice, 27(2), 125–148. Kihlstrom, R. E., & Laffont, J.-J. (1979). A general equilibrium entrepreneurship theory of firm formation based on risk aversion. Journal of Political Economy, 87(4), 719–748. Kirzner, I. M. (1973). Competition and entrepreneurship. Chicago, IL: University of Chicago Press. Kirzner, I. M. (1979). Perception, opportunity, and profit: Studies in the theory of entrepreneurship. Chicago, IL: University of Chicago Press. Klineberg, S. L. (1968). Future time perspective and the preference for delayed reward. Journal of Personality and Social Psychology, 8(3), 253–257. Knörr, H., Alvarez, C., & Urbano, D. (2013). Entrepreneurs or employees: A crosscultural cognitive analysis. International Entrepreneurship and Management Journal, 9(2), 273–294.
84 T. K. DAS and B. TENG Kozan, M. K., Oksoy, D., & Ozsoy, O. (2012). Owner sacrifice and small business growth. Journal of World Business, 47(3), 409–419. Kogan, N., & Wallach, M. A. (1964). Risk taking: A study in cognition and personality. New York, NY: Holt, Rinehart & Winston. Kunisch, S., Bartunek, J. M., Mueller, J., & Huy, Q. N. (2017). Time in strategic change research. Academy of Management Annals, 11(2), 1005–1064. Larson, A. (1991). Partner networks: Leveraging external ties to improve entrepreneurial performance. Journal of Business Venturing, 6(3), 173–188. Larson, A. (1992). Network dyads in entrepreneurial settings: A study of the governance of exchange relationships. Administrative Science Quarterly, 37(1), 76–104. Larson, A., & Starr, J. A. (1993). A network model of organization formation. Entrepreneurship Theory and Practice, 17(2), 5–15. Leibenstein, H. (1968). Entrepreneurship and development. American Economic Review, 58(2), 72–83. Lerner, M., Zahra, S. A., & Kohavi, Y. G. (2007). Time and corporate entrepreneurship. Advances in Entrepreneurship, Firm Emergence and Growth, 10, 187–221. Lessner, M., & Knapp, R. R. (1974). Self-actualization and entrepreneurial orientation among small business owners: A validation study of the POI. Educational and Psychological Measurement, 34(2), 455–460. Leutner, F., Ahmetoglu, G., Akhtar, R., & Chamorro-Premuzic, T. (2014). The relationship between the entrepreneurial personality and the Big Five personality traits. Personality and Individual Differences, 63, 58–63. Libby, R., & Fishburn, P. C. (1977). Behavioral models of risk taking in business decisions: A survey and evaluation. Journal of Accounting Research, 15(2), 272–292. Liles, P. R. (1974). New business ventures and the entrepreneur. Homewood, IL: Irwin. Litzinger, W. D. (1965). The motel entrepreneur and the motel manager. Academy of Management Journal, 8, 268–281. Lopes, L. L. (1987). Between hope and fear: The psychology of risk. Advances in Experimental Social Psychology, 20, 255–295. Lopes, L. L. (1996). When time is of the essence: Averaging, aspiration, and the short run. Organizational Behavior and Human Decision Processes, 65(3), 179–189. Low, M. B., & MacMillan, I. C. (1988). Entrepreneurship: Past research and future challenges. Journal of Management, 14(2), 139–161. Lumpkin, G. T., & Brigham, K. H. (2011). Long-term orientation and intertemporal choice in family firms. Entrepreneurship Theory and Practice, 35(6), 1149–1169. MacCrimmon, K. R., & Wehrung, D. A. (1986). Taking risks: The management of uncertainty. New York, NY: Free Press. Manimala, M. J. (1992). Entrepreneurial heuristics: A comparison between high PI (pioneering-innovative) and low PI ventures. Journal of Business Venturing, 7(6), 477–504. March, J. G., & Shapira, Z. (1987). Managerial perspectives on risk and risk taking. Management Science, 33(11), 1404–1418. March, J. G., & Shapira, Z. (1992). Variable risk preferences and the focus of attention. Psychological Review, 99(1), 172–183. Mayer, R. C., Davis, J. H., & Schoorman, F. D. (1995). An integrative model of organizational trust. Academy of Management Review, 20(3), 709–734.
The Temporalities of Entrepreneurial Risk Behavior 85 McClelland, D. C. (1961). The achieving society. Princeton, NJ: Van Nostrand. McClelland, D. C. (1965). Need achievement and entrepreneurship: A longitudinal study. Journal of Personality and Social Psychology, 1, 389–392. Milburn, M. A. (1978). Sources of bias in the prediction of future events. Organizational Behavior and Human Performance, 21, 17–26. Miller, K. D. (2007). Risk and rationality in entrepreneurial processes. Strategic Entrepreneurship Journal, 1(1–2), 57–74. Mowen, J. C., & Mowen, M. M. (1991). Time and outcome valuation: Implications for marketing decision making. Journal of Marketing, 55(4), 54–62. Mueller, S. L., & Thomas, A. S. (2000). Culture and entrepreneurial potential: A nine country study of locus of control and innovativeness. Journal of Business Venturing, 16(1), 51–75. Nisan, M., & Minkowich, A. (1973). The effect of expected temporal distance on risk taking. Journal of Personality and Social Psychology, 25(3), 375–380. Opper, S., Nee, V., & Holm, H. J. (2017). Risk aversion and guanxi activities: A behavioral analysis of CEOs in China. Academy of Management Journal, 60(4), 1504–1530. Palich, L. E., & Bagby, D. R. (1995). Using cognitive theory to explain entrepreneurial risk-taking: Challenging conventional wisdom. Journal of Business Venturing, 10(6), 425–438. Palmer, M. (1971). The application of psychological testing to entrepreneurial potential. California Management Review, 13(3), 32–39. Peacock, P. (1986). The influence of risk-taking as a cognitive judgmental behavior of small business success. In R. Ronstadt, J. A. Hornaday, R. Peterson, & K. H. Vesper (Eds.), Frontiers of Entrepreneurship Research 1986: The proceedings of the Babson Conference on entrepreneurship research (pp. 110–118). Wellesley, MA: Babson College. Peterson, R., & Smith, N. R. (1986). Entrepreneurship: A culturally appropriate combination of craft and opportunity. In R. Ronstadt, J. A. Hornaday, R. Peterson, & K. H. Vesper (Eds.), Frontiers of Entrepreneurship Research 1986: The proceedings of the Babson Conference on entrepreneurship research (pp. 1–11). Wellesley, MA: Babson College. Petrakis, P. E. (2007). The effects of risk and time on entrepreneurship. International Entrepreneurship and Management Journal, 3, 277–291. Schneider, S. L., & Lopes, L. L. (1986). Reflection in preferences under risk: Who and when may suggest why. Journal of Experimental Psychology: Human Perception and Performance, 12(4), 535–548. Schumpeter, J. A. (1934). Theory of economic development. Cambridge, MA: Harvard University Press. Sexton, D. L., & Bowman, N. B. (1983). Comparative entrepreneurship characteristics of students: Preliminary results. In J. A. Hornaday, J. A. Timmons, & K. H. Vesper (Eds.), Frontiers of Entrepreneurship Research 1983 (pp. 213–232). Wellesley, MA: Babson College. Sexton, D. L., & Bowman, N. B. (1985). The entrepreneur: A capable executive and more. Journal of Business Venturing, 1(1), 129–140. Sexton, D. L., & Bowman, N. B. (1986). Validation of a personality index: Comparative psychological characteristics analysis of female entrepreneurs, managers,
86 T. K. DAS and B. TENG entrepreneurship students and business students. In R. Ronstadt, J. A. Hornaday, R. Peterson, & K. H. Vesper (Eds.), Frontiers of Entrepreneurship Research 1986: The proceedings of the Babson Conference on entrepreneurship research (pp. 40–51). Wellesley, MA: Babson College. Shan, W., Walker, G., & Kogut, B. (1994). Interfirm cooperation and startup innovation in the biotechnology industry. Strategic Management Journal, 15(5), 387–394. Shapira, Z. (1995). Risk taking: A managerial perspective. New York, NY: Russell Sage Foundation. Shaver, K. G., & Scott, L. R. (1991). Person, process, and choice: The psychology of new venture creation. Entrepreneurship Theory and Practice, 16(2), 23–45. Shelley, M. K. (1994). Gain/loss asymmetry in risky intertemporal choice. Organizational Behavior and Human Decision Processes, 59(1), 124–159. Slotte-Kock, S., & Coviello, N. (2010). Entrepreneurship research on network processes: A review and ways forward. Entrepreneurship Theory and Practice, 34(1), 31–57. Smith, N. R. (1967). The entrepreneur and his firm: The relationship between type of man and type of company. East Lansing, MI: Michigan State University. Smith, N. R., & Miner, J. B. (1983). Type of entrepreneur, type of firm, and managerial motivation: Implications for organizational life cycle theory. Strategic Management Journal, 4, 325–340. Stevenson, H. H., & Jarillo, J. C. (1990). A paradigm of entrepreneurship: Entrepreneurial management. Strategic Management Journal, 11(5), 17–27. Stewart, W. H., Jr., & Roth, P. L. (2001). Risk propensity differences between entrepreneurs and managers: A meta-analytic review. Journal of Applied Psychology, 86(1), 145–153. Stopford, J. M., & Baden-Fuller, C. W. F. (1994). Creating corporate entrepreneurship. Strategic Management Journal, 15(7), 521–536. Strickland, L., Lewicki, R. J., & Katz, A. M. (1966). Temporal orientation and perceived control as determinants of risk taking. Journal of Experimental Social Psychology, 2, 143–151. Thoms, P., & Greenberger, D. B. (1995). The relationship between leadership and time orientation. Journal of Management Inquiry, 4(3), 272–292. Tipu, S. A. A. (2017). Entrepreneurial risk taking: Themes from the literature and pointers for future research. International Journal of Organizational Analysis, 25(3), 432–455. Tumasjan, A., Welpe, I., & Spörrie, M. (2013). Easy now, desirable later: The moderating role of temporal distance in opportunity evaluation and exploitation. Entrepreneurship Theory and Practice, 37(4), 859–888. Vlek, C., & Stallen, P. J. (1980). Rational and personal aspects of risk. Acta Psychologica, 45, 273–300. Wales, W. J. (2016). Entrepreneurial orientation: A review and synthesis of promising research directions. International Small Business Journal, 34(10), 3–15. Webster, F. A. (1977). Entrepreneurs and ventures: An attempt at classification and clarification. Academy of Management Review, 2(1), 54–61. Webster’s Third New International Dictionary. (1961). Chicago, IL: Merriam Co.
The Temporalities of Entrepreneurial Risk Behavior 87 Welter, F. (2011) Contextualizing entrepreneurship: Conceptual challenges and ways forward. Entrepreneurship Theory and Practice, 35(1), 165–184. Wiklund, J., Nikolaev, B., Shir, N., Foo, M.-D., & Bradley, S. (2019). Entrepreneurship and well-being: Past, present, and future. Journal of Business Venturing, 34(4), 579–588. Woo, C. Y., Cooper, A. C., & Dunkelberg, W. C. (1991). The development and interpretation of entrepreneurial typologies. Journal of Business Venturing, 6(2), 93–114. Wood, M. S., & Rowe, J. D. (2011). Nowhere to run and nowhere to hide: The relationship between entrepreneurial success and feelings of entrapment. Entrepreneurship Research Journal, 1(4), 1–41. Yates, J. F., & Stone, E. R. (1992). The risk construct. In J. F. Yates (Ed.), Risk-taking behavior (pp. 1–25). Chichester, England: Wiley. Zahra, S. A., Wright, M., & Abdelgawad, S. G. (2014). Contextualization and the advancement of entrepreneurship research. International Small Business Journal, 32(5), 479–500.
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CHAPTER 4
ENTREPRENEURS UNDER AMBIGUITY A Prospect Theory Perspective Corina Paraschiv Anisa Shyti
ABSTRACT This chapter focuses on entrepreneurial decision making under ambiguity. Our main contribution is to insist on the importance of ambiguity in entrepreneurship, as many entrepreneurial decisions are highly strategic, unique, and mostly taken in situations with limited and imprecise information. Uncertainty, quintessential in entrepreneurship, has inspired early theoretical works and psychological analysis of decision making in the entrepreneurship literature. Past contributions have mainly focused on risk and risk preferences as determinants of entry to entrepreneurship, but the message of this literature is hardly conclusive. In this chapter, we provide a state of the art overview on a recently emerging literature on ambiguity attitudes and entrepreneurship research. Many of such recent works are based on expected utility theory and thus carry the same limitations of this theory. Our chapter emphasizes the advantage of experimental economics and the potential of prospect theory applications. We focus specifically on the weighting function
Entrepreneurship and Behavioral Strategy, pages 89–111 Copyright © 2020 by Information Age Publishing All rights of reproduction in any form reserved.
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90 C. PARASCHIV and A. SHYTI aspect, and theorize on how it can contribute to further our understanding of entrepreneurial behavior. Prospect theory represents a sophisticated tool that may disentangle subtle behavioral differences between entrepreneurial profiles and other decision makers.
INTRODUCTION Entrepreneurial decisions, being at the forefront of innovation and economic development, involved with the creation or discovery processes of lucrative opportunities, are continuously subject to ambiguity (Knight, 1921; Shane & Venkataraman, 2000). Success stories in entrepreneurship are associated with many funding anecdotes. For example, in 1999, graduate students Brin and Page, founders of Google.com, offered to sell for $1 million the search engine they had developed to George Bell, CEO of Excite, who then rejected the offer. Within that year, Google.com obtained $25 million of funding, and today the company is worth $416.8 billion of market capitalization. Embracing the unknown is intrinsic in entrepreneurship (Hayek, 1948), although not all undertakings are similar in their potential achievements and riskiness. Many entrepreneurs perish after ill-conceived market strategies, persistently trying alternative ventures, and mostly accepting losses and significant trade-offs in terms of income (Hamilton, 2000). Moreover, numerous startups flourish in Western economies, but many fail soon after inception: 50% fail within 2 years and 67% within 4 years (Geroski, 1995), a phenomenon known as “excess entry.” Although the existing entrepreneurship research has advanced several explanations, as over-optimism or escalation of commitment, these observations are still considered open questions and there is no unifying theory for the entrepreneurial choice (Astebro, Herz, Nanda, & Weber, 2014). Such empirically documented observations also contradict most economic models based on expected utility theory, as these entrepreneurial choices do not appear to be wealth maximizing. Moreover, under conditions of uncertainty and ambiguity, with no probabilities available, the classical economic model is silent on behavioral predictions, let alone interpretations of observed behavior. Research in entrepreneurship, typically multidisciplinary, has developed into a stream of studies following a psychological tradition, pointing to specific traits and possible judgment biases that may influence entrepreneurial decision making. Thus far, decades of studies have investigated the degree of optimism of entrepreneurs, overconfidence, risk preferences, ambiguity perceptions, and so forth. However, these past efforts have failed to produce strong evidence of a typical “entrepreneurial profile,” and whether entrepreneurs are more risk tolerant, as posited in most occupational choice theories, is
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yet unsettled. Additional contributions that have measured ambiguity tolerance of entrepreneurs and other decision makers, relying on psychometric scales (Dollinger, 1983; Schere, 1982) have also provided inconsistent or opposing results. Although uncertainty is quintessential in entrepreneurship and entrepreneurial decision making, the ambiguity that characterizes most strategic and unique decisions is often neglected in management and entrepreneurial studies. With the development of theories that allow investigating ambiguity quantitatively, there is a renewed interest in addressing ambiguity attitudes in entrepreneurship research. Ambiguity refers to situations where probabilistic information is imprecise and cannot be inferred from existing statistical data (Knight, 1921). Situations of ambiguity in the business domain could refer to strategic decisions, to creation of new ventures, to choices of career paths, to resource allocation processes or other financial commitments. In situations of ambiguity estimating probabilities of success is challenging, as these decisions are often unique with no available history, are strongly dependent on contingencies and offer little opportunities for learning. In decision contexts under ambiguity, Ellsberg (1961) in his seminal contribution predicts ambiguity aversion, which describes individuals’ choice to refrain from options with unknown probabilities, and prefer risky options instead, with known probabilities. In fact, ambiguity in life or business generates a sort of “discomfort” that may hinder action. When considering economic decisions with no clear course of action to be taken, people may mull over expectations of possible scenarios, postpone decisions, or delay choices, in order to collect more relevant information, which may not always be available. As an example, one could consider a developer evaluating two alternative platforms for launching his new application. Both platforms yield the same outcome in terms of profit in case of success. However, for the first platform, the developer knows that for every hundred new applications proposed, 50 succeed and 50 fail. The rates of success for the other platform are unknown. What is a sensible decision in this case? What would determine the developer’s choice? Or, would he simply decide on the basis of perceptions about his own abilities to develop a successful application? The developer may be enticed to invest time and other resources in finalizing his application anyway, and decide at a later stage on the platform. He would thus be vulnerable to the ambiguity of such a decision. Maybe he overestimates the unlikely event of success, given the considerable number of other developers in his domain; or maybe he underestimates the highly likely event of failure, like many other developers did before him. How can we account for such behavioral patterns?
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Advances in prospect theory have made it possible to better understand behavior under both risk and ambiguity. Very recently, emerging experimental designs in entrepreneurship are employing prospect theory to explain observed entrepreneurial behavior (Hsu, Wiklund, & Cotton, 2017; Shyti & Paraschiv, 2015). In this chapter, we offer a state of the art perspective of ambiguity theories and recent developments of experimental economics in the context of entrepreneurship. We draw insights on how we can better understand micro foundations of entrepreneurship based on behavioral theories of choice, as prospect theory. The rest of the chapter is organized as follows. First, the chapter offers a brief review of the literature on uncertainty and ambiguity. Second, it focuses on the weighting function aspect of prospect theory. It continues by summarizing the existent literature on entrepreneurial decision making under risk and ambiguity. The chapter concludes by emphasizing the potential contributions of prospect theory and experimental economics in future developments in entrepreneurship research. DECONSTRUCTING UNCERTAINTY: A DECISION MAKING PERSPECTIVE The importance of uncertainty in economic activity was understood since Cantillon in 1755, when he first pointed out that the entrepreneur sustains certain costs of production while facing uncertain profits that manifest over time. Other scholars recognize that entrepreneurs are rewarded for bearing uncertainty rather than risk, which is in turn insurable (Knight, 1921; Say, 1836). In the same vein, subsequent formal theories posit that the more risk tolerant individuals self-select in entrepreneurship and hire the risk averse individuals as employees (Kihlstrom & Laffont, 1979). However, tackling empirically uncertainty bumps into obvious operationalization difficulties. Knight (1921) offered a clear distinction between risk and uncertainty. He defined risk as a situation in which possible events (and associated consequences) are known and there is a probability distribution over the possible events. Knight (1921) defined uncertainty as a situation in which possible events are known, but there is no probability distribution available to the decision maker. This is also known as Knightian Uncertainty, different from Radical Uncertainty of Keynes (1921) and Shackle (1968; see Figure 4.1). Following Ellsberg (1961) the definition of ambiguity focuses on the absence of probabilities, thus locating ambiguity as an in-between situation of two extremes: the risky option with known probabilities on one pole, and uncertainty, the option with no available probabilities on the other.
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Figure 4.1 Types of uncertainty.
Situations of risk are characterized by known probabilities, and are mostly encountered in games of chance, in lotteries, or in psychological experiments. In real-life circumstances precise probabilities are rarely available. Surprisingly, past research in management has focused mainly on risk and risk perceptions of managers, investors, and other decision makers. The same trend has characterized also entrepreneurship research, in which uncertainty has been treated qualitatively (McKelvie, Haynie, & Gustavsson, 2011; McMullen & Shepherd, 2006), and often as a synonym of risk (Alvarez & Barney, 2005; Shane, 2000). Ellsberg’s Paradox Savage (1954) is among the most prominent works in decision theory that formally represented uncertainty in individual decision making. In subjective expected utility theory, Savage (1954) introduces the notion of subjective probability distribution of decision makers. More precisely, uncertainty is seen as subjective and the absence of objective probabilities is considered not to affect decision making. In fact, in absence of objective probabilities, decision makers assign their subjective probabilities to any world event, and are able to evaluate economic options through the classical expected utility theory. Ellsberg (1961) was the first to formally show that for a decision maker a risky option is not the same as an ambiguous option, which is characterized by the absence of probabilistic information. In Ellsberg’s work proved that ambiguity affects decision making, as decision makers are not indifferent to it. Ellsberg (1961) shows that decision makers systematically avoid ambiguous
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options, and prefer risky options instead. This choice pattern causes decisions to deviate from expected utility theory predictions. Ellsberg called this phenomenon ambiguity aversion, which is also known as Ellsberg’s Paradox. In Ellsberg’s famous two-color example, a decision maker faces two urns, each containing 100 balls. The known urn contains 50 red balls and 50 black balls. The unknown urn contains 100 balls, either red or black, but in unknown proportion. The decision maker is asked to choose one urn (known or unknown) and one color (red or black). Once he makes his choice, a ball is drawn randomly from the selected urn. If the ball is the color chosen by the decision maker, he wins a prize; otherwise, he gets nothing. The decision maker is indifferent regarding the betting color (red or black) within each urn. However, the decision maker is not indifferent between the two urns. The phenomenon that Ellsberg (1961) describes is that the decision maker, unable to assign objective probabilities to either red or black in the unknown urn, refrains from that option altogether, exhibiting ambiguity aversion. Following Ellsberg’s (1961) lead, two parallel streams of research developed in decision science. The first stream of research, with an axiomatic orientation, mostly produced works that model ambiguity aversion (Gilboa & Schmeidler, 1989; Schmeidler, 1989). In almost all these decision models ambiguity aversion was assumed to be an invariant feature of the decision maker’s preferences. The second stream of research, with a descriptive aim, derived most of its results from experimental studies, with the objective to understand decision making under ambiguity. Experimental investigations have confirmed ambiguity aversion, but have also shown that individuals not always avoid options with unknown probabilities as in Curley and Yates (1985), Einhorn and Hogarth (1985), Fox and Tversky (1995), and Wu and Gonzalez (1999), to mention some. Studies that have addressed decision under ambiguity from a descriptive perspective include Budescu, Khun, Kramer, and Johnson (2002), Curley and Yates (1989), González-Vallejo, Bonazzi, and Shapiro (1996), and Kuhn and Budescu (1996). Other approaches have tested the impact of ambiguity on different models of behavior, most prominent works based on prospect theory including Fox and Tversky (1998), Gonzalez and Wu (1999), Hogarth and Einhorn (1990), Kilka and Weber (2001), Tversky and Fox (1995), Tversky and Wakker (1995), Wakker (2004), and Wakker (2010). Yet, another set of studies, including Cohen, Jaffray, and Said (1987), Curley and Yates (1985), and Heath and Tversky (1991), have investigated the consequences of ambiguity on choice behavior. Operationalizing Ambiguity Previous studies, mostly belonging to the psychological stream of research, have treated the concept of ambiguity with probability intervals
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(Budescu et al., 2002; Curley & Yates, 1985; González-Vallejo et al., 1996; Smithson, 1999), a business compatible way to address ambiguity. Let’s reflect on the example of the developer who considers launching the application on a commercial platform. The entrepreneur is contemplating whether he could reach one million downloads in the first semester. Imagine he seeks the opinion of a tech expert and receives an estimate of 15% rate of success. However, for the same one million downloads in the first semester, the platform owner provides an estimate of 45% rates of success. Thus, the developer is facing an interval (15%, 45%) within which may lie the rate of success of achieving one million downloads in the first semester. These estimates naturally generate a probability interval. Another example of ambiguity represented by intervals comes from Amazon.com report in the Second Quarter 2014 Guidance stating the following: Net sales are expected to be between 18.1 billion and 19.8 billion, or to grow between 15% and 26% compared with second quarter 2013 and operating income (loss) is expected to be between $(455) million and $(55) million, compared to $79 million in second quarter 2013.
In this example ambiguity refers to outcomes (e.g., operating income, percentage of growth, etc.), instead of probabilities. Thus, such representations of ambiguity as intervals of information may apply to other business contexts, in which experts and consultants provide their best estimates about success rates of a project, the probability of occurrence of an event, the probability of an event occurring within a time horizon, the earnings forecast of a company, and so forth. A natural propensity of decision makers in business is to reduce uncertainty by gathering more information or seeking a third party opinion. Restricting the boundaries or noisy information allows for the application of more precise decision rules. In conditions of uncertainty, there is naturally a greater need to apply heuristics, for lack of better rules, but uncertainty also increases the potential of decision biases and errors (Kahneman, Slovic, & Tversky, 1982; Kahneman & Tversky, 1973). It emerges from dialogues with business practitioners that when they have the option to demand more information, they rarely ask probabilistic information, for instance, the probability to achieve a certain rate of return, or the probability to accomplish a project on time (Kahneman, 2011). However, this does not mean that business practitioners ignore the uncertainty of their environments and its impact on decision making.
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PROSPECT THEORY FOR RISK AND AMBIGUITY One of the most prominent modern decision theories developed to analyze uncertainty quantitatively is prospect theory (Kahneman & Tversky, 1979; Tversky & Kahneman, 1992; Wakker, 2010). This theory is the result of the devotion and work of Amos Tversky and Daniel Kahneman, the latter famous for earning the Nobel Prize in economics in 2002 and being regarded as the father of behavioral economics. Prospect theory was proposed as a reaction to the failure of expected utility theory to adequately explain behavior under risk. Therefore, it accounts for a large series of biases in individual decision making. The Weighting Function An important idea in prospect theory is the distortion of probabilities in the decision making process through a probability weighting function, w( . ). Consider a decision maker evaluating a risky prospect that yields an outcome X with probability p and nothing otherwise. The value of such prospect under prospect theory will depend on the importance of outcome X for the decision maker and also on his subjective perception of the probability p. Prospect theory models the fact that individuals do not behave according to the objective or given probability p, but interpret subjectively this probability by attributing more or less weight to it, through a decision weight, w(p). In general, prospect theory is concerned with prospects, which evaluation is considered independent of decisions maker’s total wealth. Formally, the value a decision maker attributes to the risky prospect depends on his utility function, U( . ), and on the probability weighting function for risk, wr( . ), and equals U(X) * wr(p). Under prospect theory, risk attitudes of decision makers are partially reflected in the shape of the utility function U( . ), and partially reflected in the shape of the weighting function for risk wr( . ). Ambiguous prospects are evaluated under prospect theory in a very similar way, meaning through a decision maker’s utility function and a weighting function. When dealing with ambiguous prospects, a common approach in experimental research has consisted in assuming a different weighting function for ambiguity, wa( . ). Ambiguity attitudes of decision makers reflect the differences in behavior under risk and under ambiguity. Assuming that the utility function is the same under both risk and ambiguity, ambiguity attitudes of decision makers are thus captured by the differences between weighting functions for risk, wr( . ), and ambiguity, wa( . ).
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Experimental Evidence on Weighting Functions for Risk Typical empirical evidence shows that decision makers exhibit risk seeking for gains with low probabilities and risk aversion for gains with high probabilities. The general interpretation of these findings in terms of the nonlinear treatment of probabilities assumed by prospect theory is that individuals overestimate small probabilities and underestimate large probabilities. Graphically the shape of w( . ) can be represented through an inverted S-shape probability weighting function as shown in Figure 4.2E. The idea behind the inverted S-shape probability weighting function is that the decision maker is willing to pay more to pass from an impossible event (0%) to a possible one (10%; the concave part near 0 in Figure 4.2E); as well, the decision maker is willing to pay considerable amounts to shift from a highly likely event (90%) to a sure one (100%; the convex part near 1 in Figure 4.2E). However, the decision maker’s willingness to pay to improve the probability of an event from 40% to 50% is much lower. The probability weighting function captures two distinct psychological phenomena in decision making: insensitivity and pessimism. Likelihood insensitivity refers to the flattened perception for changes in intermediate
Deviations From Linear Probability Due to Pessimism (Elevation)
Deviations From Linear Probability Due to Insensitivity (Curvature) 1
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Figure 4.2 Weighting functions under prospect theory. Source: Adapted from Wakker (2010).
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probabilities, which are perceived close to the 50% probability. This phenomenon reflects the decision makers’ inability to sufficiently discriminate between probability levels. Kahneman and Tversky (1979) attribute this phenomenon to cognitive psychological causes, and assume that these distortions take place during an “editing” phase, before the decision maker attaches any value to the prospects under consideration. According to Wakker (2010), likelihood insensitivity is irrational and can be corrected through incentives and learning. Pessimism refers to the tendency to underestimate the chances of success and is reflected graphically by the distance of the curve from the x-axis. For gains or positive outcomes, a weighting function closer to the x-axis is associated with more pessimism, corresponding to an underweighting of probabilities. On the contrary, a weighting function further from the x-axis is associated with optimism and corresponds to inflation or overweighting of probabilities. Empirical studies on prospect theory generally rely on functional forms to provide an overall picture on the decision maker’s risk attitude. The literature offers a variety of functional forms for the weighting function (Abdellaoui, l’Haridon, & Zank, 2010; Goldstein & Einhorn, 1987; Kahneman & Tversky, 1979; Prelec, 1998), that provide the advantage of summarizing information on the decision maker’s probability weighting through aggregated indexes. When information is summarized using one single index, it is difficult to establish a direct relation between the index itself and a clear psychological phenomenon. Therefore, recent literature recommends functional forms based on two indexes, related to elevation and curvature (Abdellaoui, Baillon, Placido, & Wakker, 2011). Such forms have the advantage to disentangle the two psychological phenomena discussed before: the pessimism/optimism of the decision maker captured by an elevation parameter and the sensitivity to changes in probabilities captured by a curvature parameter. One of the most commonly used functional form is Prelec’s (1998) two-parameter specification, given in the equation below:
(
) (2.1)
a b
w(p ) = exp (− (− ln(p )))
where a is an insensitivity index (curvature) and b is a pessimism index (elevation). When both indexes are 1, the weighting function does not present any distortion and corresponds to the 45° line. Parameter a values reflect insensitivity to changes in likelihood, with lower values corresponding to more insensitivity. Parameter b values reflect pessimism, with higher (lower) b values corresponding to higher degrees of pessimism (optimism). While the inverse S-shaped form in Figure 4.2E with pessimism and insensitivity is the most common finding in experimental research, experiments also report substantial variation of individual behavior. Figure 4.2 depicts several possible patterns of behavior. Figure 4.2A corresponds to
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the expected utility model with a decision maker treating probabilities linearly, with no pessimism and no insensitivity. The other figures correspond to different combinations of insensitivity and/or pessimism: Figure 4.2B reflects pessimism; Figure 4.2C reflects extreme insensitivity, corresponding to a decision maker who has the same behavior regardless of the probabilities involved; and Figure 4.2F reflects extreme insensitivity with pessimism. Experimental Evidence on Weighting Functions for Ambiguity Although in the last decades the topic of decision making under ambiguity has received a lot of attention in decision theory, empirical evidence is still limited. Abdellaoui et al. (2011) is one of the first studies that tests experimentally prospect theory under ambiguity. The authors show that the inverted S-shape of the weighting function is preserved under ambiguity, but distortions are even more pronounced for extreme likelihoods. The study reports ambiguity aversion for mid-range and high likelihoods. Figure 4.3 represents the weighting function for risk, wr( . ), clearly different from the 45° line, as well as the weighting function for ambiguity, wa( . ). The line of ambiguity shows that low likelihoods are even more overweighted compared to the case of risk, and larger likelihoods are even more underweighted. Abdellaoui et al. (2011) also report that ambiguity attitudes 1
0.8
w(p)
0.6 Risk 0.4
Ambiguity
0.2
0
0
0.2
0.4
p
0.6
0.8
1
Figure 4.3 Weighting functions for risk and ambiguity. Source: Adapted from Abdellaoui et al. (2011).
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differ according to decision contexts, for typical lottery experiments and natural sources of uncertainty (e.g., investing in the French stock market). Taken together, these findings show that the idea of a weighting function is powerful and some key lessons emerge from the decision making literature that need to be considered in entrepreneurship research. First, a decision maker’s risk and ambiguity attitudes are distinct (for a comprehensive literature review, see Camerer & Weber, 1992) and should not be treated as surrogates of each other. As individual attitudes toward risk are conceptually distinct from attitudes toward ambiguity, it’s important for future research in entrepreneurship to analyze these attitudes in complement to one another. Second, risk and ambiguity attitudes are not consistent with expected utility maximization. Because the utility-maximizing argument of expected utility theory is questionable when introducing ambiguity, the experimental designs used to study ambiguity attitudes of entrepreneurs need to address the issue of probability weighting. Third, emerging evidence shows that risk and ambiguity attitudes are not invariant traits of behavior, but depend on the decision context. Experimental studies, while a valuable tool to understand ambiguity attitudes of entrepreneurs, should investigate behavior using frameworks directly related to entrepreneurial decisions. Finally, in order to assess a decision maker’s behavioral responses to risk and ambiguity it is not sufficient to use only one probability point, but several questions scanning the entire probability range. This will allow to account for entrepreneurs’ behavior not only for intermediate probabilities, but also for low probabilities and high probabilities. ENTREPRENEURIAL DECISION MAKING UNDER RISK AND AMBIGUITY The premises of decision making under ambiguity set the ground for further exploitations of prospect theory in entrepreneurship and managerial studies aimed at uncovering micro foundations of behavior in business environments. Entrepreneurs Under Risk An overwhelming body of literature in entrepreneurship research has considered individual risk preferences as an important determinant of entry to entrepreneurship and has employed a variety of approaches to empirically measure risk aversion. Occupational choice theories have supported the risk tolerance assumption of entrepreneurs (Douglas & Shepherd, 2000; Kanbur, 1979; Kihlstrom & Laffont, 1979). However, Brockhaus’s (1980) efforts to
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measure individual risk propensities using psychometric scales in univariate investigations reported no differences between entrepreneurs and non-entrepreneurs, a result later supported by Gartner (1988). The hypothesis of risk tolerant entrepreneurs found some empirical validation in longitudinal surveys (Caliendo, Fossen, & Kriticos, 2009; Cramer, Hartog, Jonker, & Van Praag, 2002), which showed that the willingness to take risks increases the probability that an individual enters entrepreneurship in the future. Risk attitudes as an entrepreneurial trait were also investigated through economic experiments with binary lotteries. Works of Elston and Audretsch (2011) and Elston, Harrison, and Rutstrom (2005) have reported that entrepreneurs are either risk neutral or slightly risk averse, but again, no specific differences were detected between entrepreneurs and other decision makers. Clearly, such multitude of methods and variety of results do not enable to draw definitive conclusions. Typical critiques on the psychometric scales used to measure risk propensities emphasize that risk aversion or risk seeking could be conflated with over-optimism and other individual traits might influence respondents’ answer patterns. Referring to the survey method, Caliendo et al. (2009) point to the difficulties and challenges of measuring risk aversion in the field. The longitudinal approach was further criticized as risk attitudes may not be stable over time. Also the experimental economics approach to investigating differences in risk attitudes of entrepreneurs and non-entrepreneurs (Elston & Audretsch, 2011; Elston et al., 2005) is not free of limitations. This approach was mostly criticized for using abstract lotteries with small-stakes, that focus on one probability point and assume expected utility theory. Such multi-disciplinary evidence in entrepreneurship research does not allow to make clear associations of specific risk attitudes with entrepreneurial profiles (Parker, 2009). Moreover, these considerations call for more attention on the fundamental point raised by Dohmen et al. (2011) on the stability or risk attitudes across contexts and over time. Entrepreneurs Under Ambiguity The general inconclusiveness of risk attitudes to define entrepreneurial profiles has not discouraged research efforts to also investigate entrepreneurs’ attitudes toward ambiguity. Entrepreneurs start a new venture with a vague knowledge of their likelihood of success. In many occasions, entrepreneurs lack experience and face conflicting or insufficient statistical evidence, conditions that make it difficult to define precise predictions about the success of their business. Challenges related to estimations of likelihood of success for a new venture are also related to the aggregation that the notion of success incorporates.
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Success can be related to surviving on a 10-year horizon, to obtaining initial funding, to achieving a 20% market share within a given time span. Most entrepreneurs believe that their fundraising campaigns will succeed and the venture capitalist decisions will be favorable for their startup. Thus, addressing how entrepreneurs perceive their chances of success in the field is challenging, as investors’ feedback, market’s response, or customers’ appreciation may manifest in some future undefined time horizon. The initial investigations of the topic of ambiguity appeared in the 1980s, with a predominantly psychological approach. Recently, a few experimental economics contributions focus on specific aspects of entrepreneurial decision making under ambiguity. Yet, how ambiguity influences entrepreneurs’ decisions is still an under-investigated topic in entrepreneurship research, despite its essential role in understanding entrepreneurial behavior. Psychological Experiments in Entrepreneurship Ambiguity is not new in psychological research. During the late 1940s, Frenkel-Brunswik (1949) was the first to conceive and develop a psychometric scale aimed at assessing individual perceptions to ambiguity that she named intolerance to ambiguity. Budner (1962) modified the original intolerance to ambiguity scale and its interpretation, defining an ambiguous situation as one “which cannot be adequately structured or categorized by the individual because of the lack of sufficient cues or situations characterized by novelty, complexity, or insolubility” (p. 30), with “threatening” or “avoidance” reactions to ambiguity manifesting through cognitive, emotional, and behavioral aspects. Also Mac Donald (1970) further revisited the intolerance to ambiguity psychometric scale switching to ambiguity tolerance, to convey a framing in which ambiguity was desirable. Schere (1982), adopting a trait-approach to entrepreneurship research, investigated ambiguity perception of entrepreneurs and managers relying on applications of the ambiguity intolerance scale. Schere (1982) reported entrepreneurs to exhibit higher ambiguity tolerance compared to managers, results that confirmed his hypothesis of entrepreneurs facing highly uncertain situations, characterized as turbulent, chaotic, complex or conflicting. Later on, Dollinger (1983) failed to replicate the same findings, and attributed such inconsistency to poor sampling. However, more recent contributions (Tajeddini & Mueller, 2009; Teoh & Foo, 1997) examine a variety of entrepreneurial personal characteristics, including the intolerance to ambiguity scale, with mainly inconclusive results. Generally, such psychometric scales have been subject of criticism for being unreliable, for providing piecemeal results on the psychology of ambiguity perceptions, weak links to decision making, and for lacking strong contributions to theory (McLain, 2009).
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Economic Experiments in Entrepreneurship Only very recently, a few empirical papers have addressed ambiguity attitudes of entrepreneurs, tapping in from the vast experimental literature in decision making. Hardenbol (2012) interviewed entrepreneurs, managers, and students, and reported no difference among their choice behavior. Hardenbol (2012) estimates ambiguity and risk attitudes using binary choices between lottery options, with gains up to $40. Bengtsson, Sanandaji, and Johannesson (2012) investigate ambiguity and risk for entrepreneurs and non-entrepreneurs based on a survey with 11,743 individuals from the Swedish Twin Registry. Risk attitudes are inferred through individuals’ choices between a fixed and a variable salary with probability 50%. Ambiguity attitudes are determined through a single question, based on three-color Ellsberg’s example (Ellsberg, 1961), in which respondents have to choose between a risky lottery and an ambiguous lottery. Bengtsson et al. (2012) findings are consistent with less risk and ambiguity aversion for entrepreneurs compared with non-entrepreneurs. Koudstaal, Sloof, and Van Praag (2014) run a large scale lab-in-the-field experiment. They gather data from a survey with 910 entrepreneurs, 397 managers, and 981 employees in Holland. This design employs tasks with multiple choice lists for both risk and ambiguity using a 50% probability. In the case of risk, the decision maker chooses between a risky option and a certain option. In the case of ambiguity, the task involves a risky option and an ambiguous option. The results of Koudstaal et al. (2014) reveal that entrepreneurs and managers are equally ambiguity averse, and slightly more ambiguity averse compared to employees. However, they report that these differences disappear when controlling for typical demographics as age, education, and income among others. Probably the most prominent study to date on entrepreneurial behavior under uncertainty is provided by Holm, Opper, and Nee (2013) and compares 700 entrepreneurs and 200 non-entrepreneurs based in China. These authors study risk and ambiguity attitudes using several binary choices between monetary lotteries. Their main tool to determine ambiguity attitudes is a decision task in the form of a choice list with one option offering a sure outcome, and the other option offering an outcome with ambiguous probabilities between 25% and 75%, whose natural center is 50%. In another task, they use an uncertainty option (no probability information provided) instead of the ambiguous one. They observe that compared with the control group, entrepreneurs were more willing to accept situations of uncertainty involving competition and trust. As per risk and ambiguity attitudes, general results of Holm et al. (2013) report no differences between entrepreneurs and the control group.
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Entrepreneurs and Prospect Theory The above-mentioned experimental designs (Bengtsson et al., 2012; Hardenbol, 2012; Holm et al., 2013) do not sufficiently account for the existing evidence on prospect theory. They usually employ a Holt and Laury (2002) method based on expected utility, thus providing biased estimates for risk and ambiguity attitudes. Extensive empirical evidence shows that expected utility is a fallible guide in understanding decision making, as individuals consistently violate its predictions. Also, decision tasks are often based on Ellsberg-type lottery questions with relatively low stakes (Bengtsson et al., 2012; Hardenbol, 2012). Such tools, based on lotteries, are of questionable validity when used to predict behavior for business decisions as ambiguity attitudes are not constant across domains (Abdellaoui et al., 2011; Dohmen et al., 2011). Moreover, ambiguity attitudes are usually investigated for the 50% likelihood level, thus neglecting the richness of behavior that occurs at extreme likelihoods. To the best of our knowledge, only one recent study by Shyti and Paraschiv (2014) attempts to investigate entrepreneurial behavior under ambiguity using prospect theory. Shyti and Paraschiv (2014) show that both entrepreneurs and wage earners behave according to prospect theory (Kahneman & Tversky, 1979). This is perhaps the first study that emphasizes violations to expected utility theory predictions in entrepreneurial decisions making. The paper reports the results of an online experiment aimed at comparing attitudes towards risk and towards ambiguity in occupational choice decisions for a group of entrepreneurs and a group of non-entrepreneurs. Respondents are presented with a series of potential entrepreneurial projects, differing in the degrees of risk and ambiguity, and are asked to state their wage equivalent for each project. Based on the reported wage equivalents, the authors estimate weighting function for risk, wr, and for ambiguity, wa. They provide evidence of inverted S-shaped weighting functions for both entrepreneurs and non-entrepreneurs, consistent with overestimation of low likelihoods and underestimation of high likelihoods under risk and under ambiguity. The use of prospect theory to analyze occupational choice decisions allows providing a very precise picture concerning behavioral differences between entrepreneurs and non-entrepreneurs. The behavior of the two groups is different, with entrepreneurs exhibiting a higher level of optimism compared to non-entrepreneurs. Overall, entrepreneurs are more risk seeking and more ambiguity averse in evaluating entrepreneurial projects. Shyti and Paraschiv (2014) report prevailing pessimism for entrepreneurs under ambiguity, consistent with entrepreneurs being more sensitive to the precision of information about the chances of success of an entrepreneurial project.
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DESCRIPTIVE IMPORTANCE OF PROSPECT THEORY Bridging experimental work in decision theory and entrepreneurship research is a challenging and not vacuous task. Besides the importance of ambiguity and uncertainty in entrepreneurship, yet very little is known regarding entrepreneurial behavior under ambiguity. Although scholars have suggested that biases influence entrepreneurial decisions, and more so under uncertainty (Busenitz & Barney, 1997; Schade & Koellinger, 2007), the specific direction of influence and the micro mechanisms of this association (i.e., whether cognitive or motivational) remain unclear. Hence, it becomes relevant to understand entrepreneurial decision making under ambiguity, and then address the role of relevant biases coupled with entrepreneurial behavioral responses. Modern behavioral theories, specifically prospect theory, may account for some of the unresolved empirical puzzles in entrepreneurship. For instance, prospect theory could offer alternative explanations for the observed over-entry in markets. Overweighting of small probabilities may contribute to risk seeking and excess entry, which may be consistent with escalation of commitment or over-investing, and may lead to high rates of entrepreneurial failure. On the other extreme of the probability range, underweighting of high probabilities may relate to underinvesting in profitable prospects. Hence, prospect theory may account for the richness of behavior that we observe empirically in the business world. However, many challenges remain, and to examine business decisions one needs to take into consideration several likelihood levels, including the extremes (e.g., very low and very high probabilities). Additionally, such theory is versatile and enables to deal with behavioral perceptions of ambiguity, the total absence of probabilities, and different degrees of ambiguity. Moreover, the enhanced descriptive power of prospect theory may allow detecting also subtle differences in decision making of entrepreneurs and non-entrepreneurs through carefully designed experiments. CONCLUSION This chapter contributes to the ongoing debate on the role of uncertainty in entrepreneurial decision making by focusing on ambiguity. Our main contribution is to insist on the importance of ambiguity in entrepreneurship, as many entrepreneurial decisions are taken under conditions of imprecise information. We argue that an entrepreneur is rarely in a situation with known probabilities (risk) or in a situation in which he knows nothing at all (complete ignorance or radical uncertainty), but in an intermediate state in which he has a vague idea about the chances of success. Our second message is that, in order to adequately investigate ambiguity, entrepreneurship
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scholars should build on modern decision theories. A considerable body of economic research in entrepreneurship is still based on expected utility theory, which is shown to be a fallible guide in understanding behavior due to its normative nature. Prospect theory can provide a better framework to study ambiguity. Our chapter can also be seen as a state of the art of experimental economics applications to investigations of ambiguity in entrepreneurial decision making. The scant empirical evidence that has emerged so far in the entrepreneurship field confirms the challenges and constraints in addressing ambiguity in decision making. The “late” interest towards ambiguity attitudes in entrepreneurship is partly due to the complexity of models that analyze uncertainty quantitatively and partly to the difficulties to adapt experimental designs to the context of entrepreneurial decisions. The increasing number of empirical studies during the last years attests to a vivid debate on entrepreneurship research on attitudes toward ambiguity, although the message of these emerging studies is yet scattered, and does not allow to fully grasp differences in behavior or typical patterns in entrepreneurial decision making. Nonetheless, the current approach to investigating the topic of ambiguity in entrepreneurial decision making stresses the importance of economic experiments as a promising method that could further our understanding of behavior profiles of entrepreneurs and non-entrepreneurs. However, so far many open questions remain. What do we know about ambiguity attitudes of entrepreneurs in different business contexts? Do entrepreneurs accommodate ambiguity in their decision processes and under which conditions? Do entrepreneurs differ from non-entrepreneurs and what are the factors that explain these differences? These questions call for further investigations of ambiguity based on experimental economics and behavioral decision making theories that provide the advantage to focus on particular circumstances and to assess the role of specific factors. A promising direction for future research in entrepreneurship is to explore the role of entrepreneurial experience. Two recent studies point to the importance of this factor. First, a study by Hsu et al. (2017) puts the accent on the contradicting predictions of self-efficacy theory of individuals that restart a business after experiencing failure in a previous business venture. Assuming prospect theory, Hsu et al. (2017) find experimental support for the observed entrepreneurial reentry. A second study, by Shyti and Paraschiv (2015), suggests that startup experience might reduce ambiguity aversion of entrepreneurs. Thus, serial entrepreneurs (that have more than two startup experiences) are shown to be more optimistic and less ambiguity averse than novice entrepreneurs (that have only started a business once). These findings call for further research on factors that moderate
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the relation between entrepreneurial experience and ambiguity attitudes, as expertise, human capital, accumulated wealth, and so forth. In investigating behavioral differences between entrepreneurs and nonentrepreneurs, another important topic for future research might also be to refine the relation between the chosen definition of an entrepreneur (Gartner, 1988) and observed ambiguity attitudes. Potential contributions could assess ambiguity attitudes of specific types of entrepreneur, such as innovators (Schumpeter, 1934), arbitrageurs (Kirzner, 1973), or simply self-employed individuals. Future research could also focus on the degree of ambiguity, as the existence of more or less ambiguity may bear some relevance on observed behavior of entrepreneurs. Higher degrees of ambiguity might yield more prudence, which could be more pronounced for entrepreneurs than for non- entrepreneurs. Thus, higher ambiguity might be associated with higher ambiguity aversion. ACKNOWLEDGMENT This chapter is based on the unpublished doctoral dissertation of Anisa Shyti at HEC Paris, France (Shyti, 2014). Save some minor changes, it was earlier published as Paraschiv, C., & Shyti, A., (2016). Entrepreneurs under ambiguity: A prospect theory perspective. In T. K. Das (Ed.), Decision making in behavioral strategy (pp. 25–47). Charlotte, NC: Information Age. REFERENCES Abdellaoui, M., Baillon, A., Placido, L., & Wakker, P. P. (2011). The rich domain of uncertainty: Source functions and their experimental implementation. American Economic Review, 101(2), 695–723. Abdellaoui, M., l’Haridon, O., & Zank, H. (2010). Separating curvature and elevation: A parametric probability weighting function. Journal of Risk and Uncertainty, 41(1), 39–65. Alvarez, S. A., & Barney, J. B. (2005). How do entrepreneurs organize firms under conditions of uncertainty? Journal of Management, 31(5), 776–793. Astebro, T., Herz, H., Nanda, R., & Weber, R. A. (2014). Seeking the roots of entrepreneurship: Insights from behavioral economics. Journal of Economic Perspectives, 28(3), 49–69. Bengtsson, O., Sanandaji, T., & Johannesson, M. (2012). Do women have a less entrepreneurial personality? Working Paper No. 944, Research Institute of Industrial Economics, Stockholm, Sweden. Brockhaus, R. H. (1980). Risk taking propensity of entrepreneurs. Academy of Management Journal, 23(3), 509–520.
108 C. PARASCHIV and A. SHYTI Budescu, D. V., Kuhn, K. M., Kramer, K. M., & Johnson, T. R. (2002). Modeling certainty equivalents for imprecise gambles. Organizational Behavior and Human Decision Processes, 88(2), 748–768. Budner, S. (1962). Intolerance of ambiguity as a personality variable. Journal of Personality, 30(1), 29–50. Busenitz, L. W., & Barney, J. B. (1997). Differences between entrepreneurs and managers in large organizations: Biases and heuristics in strategic decisionmaking. Journal of Business Venturing, 12(1), 9–30. Caliendo, M., Fossen, F. M., & Kritikos, A. S. (2009). Risk attitudes of nascent entrepreneurs–new evidence from an experimentally validated survey. Small Business Economics, 32(2), 153–167. Camerer, C., & Weber, M. (1992). Recent developments in modeling preferences: Uncertainty and ambiguity. Journal of Risk and Uncertainty, 5(4), 325–370. Cantillon, R. (1952). Essai sur la nature du commerce en général. Paris, France: INED. Cohen, M., Jaffray, J.-Y., & Said, T. (1987). Experimental comparison of individual behavior under risk and under uncertainty for gains and for losses. Organizational Behavior and Human Decision Processes, 39(1), 1–22. Cramer, J. S., Hartog, J., Jonker, N., & Van Praag, C. M. (2002). Low risk aversion encourages the choice for entrepreneurship: An empirical test of a truism. Journal of Economic Behavior & Organization, 48(1), 29–36. Curley, S. P., & Yates, J. F. (1985). The center and range of the probability interval as factors affecting ambiguity preferences. Organizational Behavior and Human Decision Processes, 36(2), 273–287. Curley, S. P., & Yates, J. F. (1989). An empirical evaluation of descriptive models of ambiguity reactions in choice situations. Journal of Mathematical Psychology, 33(4), 397–427. Dohmen, T., Falk, A., Huffman, D., Sunde, U., Schupp, J., & Wagner, G. G. (2011). Individual risk attitudes: Measurement, determinants, and behavioral consequences. Journal of the European Economic Association, 9(3), 522–550. Dollinger, M. J. (1983). Use of Budner’s intolerance of ambiguity measure for entrepreneurial research. Psychological Reports, 53(3), 1019–1021. Douglas, E. J., & Shepherd, D. A. (2000). Entrepreneurship as a utility maximizing response. Journal of Business Venturing, 15(3), 231–251. Einhorn, H. J., & Hogarth, R. M. (1985). Ambiguity and uncertainty in probabilistic inference. Psychological Review, 92(4), 433–461. Ellsberg, D. (1961). Risk, ambiguity, and the savage axioms. Quarterly Journal of Economics, 75(4), 643–669. Elston, J. A., & Audretsch, D. B. (2011). Financing the entrepreneurial decision: An empirical approach using experimental data on risk attitudes. Small Business Economics, 36(2), 209–222. Elston, J. A., Harrison, G. W., & Rutström, E. E. (2005). Characterizing the entrepreneur using field experiments (Working Paper 05–30). University of Central Florida, Orlando, FL. Fox, C. R., & Tversky, A. (1995). Ambiguity aversion and comparative ignorance. Quarterly Journal of Economics, 110(3), 585–603. Fox, C. R., & Tversky, A. (1998). A belief-based account of decision under uncertainty. Management Science, 44(7), 879–895.
Entrepreneurs Under Ambiguity 109 Frenkel-Brunswik, E. (1949). Intolerance of ambiguity as an emotional and perceptual personality variable. Journal of Personality, 18(1), 108–143. Gartner, W. B. (1988). Who is an entrepreneur? Is the wrong question. American Journal of Small Business, 12(4), 11–32. Geroski, P. A. (1995). What do we know about entry? International Journal of Industrial Organization, 13(4), 421–440. Gilboa, I., & Schmeidler, D. (1989). Maxmin expected utility with non-unique prior. Journal of Mathematical Economics, 18(2), 141–153. Goldstein, W. M., & Einhorn, H. J. (1987). Expression theory and the preference reversal phenomena. Psychological Review, 94(2), 236–254. Gonzalez, R., & Wu, G. (1999). On the shape of the probability weighting function. Cognitive Psychology, 38(1), 129–166. González-Vallejo, C., Bonazzi, A., & Shapiro, A. J. (1996). Effects of vague probabilities and of vague payoffs on preference: A model comparison analysis. Journal of Mathematical Psychology, 40(2), 130–140. Hamilton, B. H. (2000). Does entrepreneurship pay? An empirical analysis of the returns to self-employment. Journal of Political Economy, 108(3), 604–631. Hardenbol, S. C. (2012). Selection into entrepreneurship and behavioural attitudes towards situations of non-strategic uncertainty (Unpublished master’s thesis). University of Amsterdam, Amsterdam, The Netherlands. Hayek, F. A. (1948). Individualism and economic order. Chicago, IL: University of Chicago Press. Heath, C., & Tversky, A. (1991). Preference and belief: Ambiguity and competence in choice under uncertainty. Journal of Risk and Uncertainty, 4(1), 5–28. Hogarth, R. M., & Einhorn, H. J. (1990). Venture theory: A model of decision weights. Management Science, 36(7), 780–803. Holm, H. J., Opper, S., & Nee, V. (2013). Entrepreneurs under uncertainty: An economic experiment in China. Management Science, 59(7), 1671–1687. Holt, C. A., & Laury, S. K. (2002). Risk aversion and incentive effects. American Economic Review, 92(5), 1644–1655. Hsu, D. K., Wiklund, J., & Cotton, R. D. (2017). Success, failure, and entrepreneurial reentry: An experimental assessment of the veracity of self-efficacy and prospect theory. Entrepreneurship Theory and Practice, 41, 19–47. Kahneman, D. (2011). Thinking, fast and slow. New York, NY: Farrar, Strauss, Giroux. Kahneman, D., Slovic, P., & Tversky, A. (1982). Judgment under uncertainty. Cambridge, England: Cambridge University Press. Kahneman, D., & Tversky, A. (1973). On the psychology of prediction. Psychological Review, 80(4), 237–238. Kahneman, D., & Tversky, A. (1979). Prospect theory: An analysis of decision under risk. Econometrica, 47(2), 263–291. Kanbur, S. M. (1979). Of risk taking and the personal distribution of income. Journal of Political Economy, 87(4), 769–797. Keynes, J. (1921). A treatise on probability. London, England: Macmillan & Co. Kihlstrom, R. E., & Laffont, J.-J. (1979). A general equilibrium entrepreneurial theory of firm formation based on risk aversion. Journal of Political Economy, 87(4), 719–748.
110 C. PARASCHIV and A. SHYTI Kilka, M., & Weber, M. (2001). What determines the shape of the probability weighting function under uncertainty? Management Science, 47(12), 1712–1726. Kirzner, I. M. (1973). Competition and entrepreneurship. Chicago, IL: University of Chicago Press. Knight, F. (1921). Risk, uncertainty, and profit. New York, NY: Kelley and Millman. Koudstaal, M., Sloof, R., & Van Praag, M. (2014). Risk, uncertainty and entrepreneurship: Evidence from a lab-in-the-field experiment. Working Paper No. 14–136/VII, Tinbergen Institute, Amsterdam, The Netherlands. Kuhn, K. M., & Budescu, D. V. (1996). The relative importance of probabilities, outcomes, and vagueness in hazard risk decisions. Organizational Behavior and Human Decision Processes, 68(3), 301–317. Mac Donald, A., Jr. (1970). Revised scale for ambiguity tolerance: Reliability and validity. Psychological Reports, 26(3), 791–798. McKelvie, A., Haynie, J. M., & Gustavsson, V. (2011). Unpacking the uncertainty construct: Implications for entrepreneurial action. Journal of Business Venturing, 26(3), 273–292. McLain, D. L. (2009). Evidence of the properties of an ambiguity tolerance measure: The multiple stimulus types ambiguity tolerance scale-ii (MSTAT-II). Psychological Reports, 105(3), 975–988. McMullen, J. S., & Shepherd, D. A. (2006). Entrepreneurial action and the role of uncertainty in the theory of the entrepreneur. Academy of Management Review, 31(1), 132–152. Parker, S. C. (2009). The economics of entrepreneurship. Cambridge, England: Cambridge University Press. Prelec, D. (1998). The probability weighting function. Econometrica, 66(3), 497–527. Savage, L. J. (1954). The foundations of statistics. New York, NY: Wiley. Say, J. B. (1836). A treatise on political economy: Or the production, distribution, and consumption of wealth. Philadelphia, PA: Grigg & Elliot. Schade, C., & Koellinger, P. (2007). Heuristics, biases, and the behavior of entrepreneurs. Entrepreneurship, The Engine of Growth, 1, 141–163. Schere, J. L. (1982). Tolerance of ambiguity as a discriminating variable between entrepreneurs and managers. Academy of Management Proceedings, 1982(1), 404–408. Schmeidler, D. (1989). Subjective probability and expected utility without additivity. Econometrica, 57(3), 571–587. Schumpeter, J. A. (1934). Capitalism, socialism, and democracy. New York, NY: Harper and Row. Shackle, G. L. S. (1968). Uncertainty in economics and other reflections. Cambridge, England: Cambridge University Press. Shane, S., & Venkataraman, S. (2000). The promise of entrepreneurship as a field of research. Academy of Management Review, 25(1), 217–226. Shane, S. A. (2000). A general theory of entrepreneurship: The individual-opportunity nexus. Northampton, MA: Edward Elgar. Shyti, A. (2014). Entrepreneurial decision making under ambiguity: Experimental evidence on the impact of overconfidence. Unpublished doctoral dissertation, HEC Paris, France.
Entrepreneurs Under Ambiguity 111 Shyti, A., & Paraschiv, C. (2014, June). Risk and ambiguity in evaluating a new venture: An experimental study. Paper presented at DRUID Society Conference, Copenhagen, Denmark. Shyti, A., & Paraschiv, C. (2015). Does entrepreneurial experience affect risk and ambiguity attitudes? An experimental study. Academy of Management Proceedings, 2015(1), 17530. Smithson, M. (1999). Conflict aversion: Preference for ambiguity vs. conflict in sources and evidence. Organizational Behavior and Human Decision Processes, 79(3), 179–198. Tajeddini, K., & Mueller, S. L. (2009). Entrepreneurial characteristics in Switzerland and the UK: A comparative study of techno-entrepreneurs. Journal of International Entrepreneurship, 7(1), 1–25. Teoh, H. Y., & Foo, S. L. (1997). Moderating effects of tolerance for ambiguity and risk taking propensity on the role conflict-perceived performance relationship: Evidence from Singaporean entrepreneurs. Journal of Business Venturing, 12(1), 67–81. Tversky, A., & Fox, C. R. (1995). Weighing risk and uncertainty. Psychological Review, 102(2), 269–283. Tversky, A., & Kahneman, D. (1992). Advances in prospect theory: Cumulative representation of uncertainty. Journal of Risk and Uncertainty, 5(4), 297–323. Tversky, A., & Wakker, P. (1995). Risk attitudes and decision weights. Econometrica, 63(6), 1255–1280. Wakker, P. P. (2004). On the composition of risk preference and belief. Psychological Review, 111(1), 236–241. Wakker, P. P. (2010). Prospect theory: For risk and ambiguity. Cambridge, England: Cambridge University Press. Wu, G., & Gonzalez, R. (1999). Nonlinear decision weights in choice under uncertainty. Management Science, 45(1), 74–85.
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CHAPTER 5
DYNAMIC RESPONSES TO DISRUPTIVE BUSINESS MODEL INNOVATIONS Rational, Behavioral, and Normative Perspectives Oleksiy Osiyevskyy Amir Bahman Radnejad Kanhaiya Kumar Sinha
ABSTRACT How should incumbent firms respond to disruptive business model innovations introduced in their industries by innovative startups, newcomers from adjacent industries, or entrepreneurial established players? Despite much discussion, the current literature provides no clear-cut answer. One view suggests establishing autonomous business units to explore disruptive business model innovations; the other approach implies ambidextrous integration of two business models in the same firm, or even ignoring the disruptive innovation to concentrate on the core business model. In this chapter, we integrate existing views in a deductively developed model of response to disruptive business model innovations in their industries, manifested in a holistic typology Entrepreneurship and Behavioral Strategy, pages 113–145 Copyright © 2020 by Information Age Publishing All rights of reproduction in any form reserved.
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114 O. OSIYEVSKYY, A. B. RADNEJAD, and K. K. SINHA of response strategies. On its basis, we propose a dynamic behavioral model of incumbent firms’ responses to disruptive business model innovations, describing observed behavioral patterns in disrupted industries and explaining actions and reasons why these actions might deviate from the rational path. Then, we propose a rational response model, comprising a set of testable propositions regarding the contingency factors determining optimal incumbent actions when facing a disruptive business model innovation. Finally, we supplement the insights of rational and behavioral models with the real options lens to formulate a set of normative recommendations for managers of established real-world firms having to make decisions regarding nascent or gaining momentum disruptive business models in their industries.
INTRODUCTION Back in 2007, Garmin was on its rise in the booming GPS navigators market. The company was considered “the next Apple” by stock analysts (Leber, 2013), with excited customers, increasing sales, and skyrocketing stock price. Five years later, the momentum seems to be lost: revenues were shrinking (Leber, 2013), customers were switching to alternatives, and the market capitalization was less than a half of the one in 2007. The reason for this decline is simple: A major disruptive business model innovation is gaining momentum, taking away the market share from existing industry players (Downes & Nunes, 2013). This disruptive business model is manifested in new products, free map applications for smartphones (e.g., Google Maps or Waze). The problems faced by Garmin are not idiosyncratic; they manifest a new and disturbing trend in today’s business environment—the inability of established incumbent firms to adjust to industry change caused by disruptive innovation. The incumbents face a major two-staged problem: (a) having to foresee if the disruptive innovation will transform the industry; (b) having to come out with a proactive response strategy, even without knowing ex ante the answer to the first question. The long and slow demise of Kodak, notwithstanding heroic efforts of successive managers (“The Last Kodak Moment,” 2012), is a vivid and identifiable example of practical significance of the topic. There are myriad of industries in which leading firms were dethroned or forced out of business by disruptive innovators: newspaper publishing disrupted by e-media (Gilbert, 2003), computer services by cloud computing (Sultan & van de Bunt-Kokhuis, 2012), steel production disrupted by mini-mills (Christensen, 1997), or photography disrupted by digital photography (“The Last Kodak Moment,” 2012; Sandström, Magnusson, & Jörnmark, 2009). The other group of industries underwent a substantive change, and although most incumbents survived, they now have to adapt to new industry structure: for example, traditional airlines now having to co-exist with low-cost disruptors, or traditional stockbrokers
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competing with online discounters (Christensen, 2006; Markides, 2006). Lastly, there are industries where the disruptive innovations are just starting to gain momentum, and their impact is yet to be discovered: for example, traditional banking facing peer-to-peer lending, or traditional universities facing on-line models of education (Osiyevskyy & Dewald, 2018). In these cases, disruptive innovations can either completely change the existing industries, or never materialize. The scholarly work of Clayton Christensen drew the attention of researchers and practitioners to the phenomenon of incumbent failure to adequately respond to gaining momentum disruptive innovations. Scrutinizing the issue of disruptive technology in the earlier works (Christensen, 1997; Christensen & Bower, 1996), he later extended the reasoning to disruptive business models, uniting all these notions under the umbrella term “disruptive innovation” (Christensen & Raynor, 2013; Christensen, Raynor, & McDonald, 2015). Moreover, reflecting on the further elaboration of the topic in subsequent works of strategic management scholars, Christensen (2006) explicitly emphasized the business model facet of the phenomenon (“it is a business model problem, not a technology,” p. 48). Arguably, it is the evolution of disruptive business models that should receive the primary attention of researchers in this field. Indeed, “a disruptive innovation may or may not even represent a technical breakthrough. Rather, it may simply involve . . . the changing of a firm’s business model” (Crockett, McGee, & Payne, 2013, p. 858). How should incumbent firms respond to emerging disruptive business model innovations introduced in their industries by innovative startups, newcomers from adjacent industries, or entrepreneurial established players? Although discussed above examples of Garmin and Kodak paint a gloomy picture for established firms, in many instances incumbents can adapt successfully to protect themselves from disruptive innovations, or even to thrive on them, preserving the market leadership (Ansari & Krop, 2012; Wan, Williamson, & Yin, 2015; Yu & Hang, 2010). Even though the question of optimal response to disruptive innovation was extensively scrutinized in the management literature, it is still far from being resolved (Christensen, 2006), particularly for the case of disruptive business models rather than disruptive technologies. One view suggests establishing autonomous business units to explore disruptive business model innovations (Christensen & Raynor, 2013); the other approach implies ambidextrous integration of two business models in the same firm (O’Reilly & Tushman, 2008), ignoring the disruptive innovation to concentrate on the core business model, or even coming out with a new disruption in response (Charitou & Markides, 2003). Most of the existing models of incumbent firms’ response to disruptive business model innovations are developed inductively from cases or industry data (Charitou & Markides, 2003; Christensen, 1997; Christensen
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& Raynor, 2013; Habtay, 2012; Markides & Oyon, 2010). The inductive origins of these frameworks leave unanswered the question of their scope and parsimony: One cannot say for sure whether the proposed sets of actions embrace all possible responses, whether the proposed actions are not overlapping, and whether they are responses to disruption. Also, as proposed in different studies, contingency factors determining proper incumbent response must be unified in a single model. Taking into account the importance of the topic and the stage of our understanding of the disruptive business model innovations phenomenon, the further progress of the field would benefit from deductive generalizing of available theoretical insights and observed empirical regularities into a holistic theoretical model. This sets the motivation for the current chapter. Therefore, in this chapter, we intend to address the following questions: (a) “What is the rational incumbent firm response to gaining momentum disruptive innovations?”; (b) “Which factors explain observable patterns of incumbents’ behavior when faced with disruptive business model innovations?”; and (c) “What are the normative recommendations for managers of incumbent firms in such situations?” Uniting the literature on business models and disruptive innovations, we address the listed research questions in the following way. First, we clarify the conceptualization of key terms (business model, business model innovation/change, and disruptive business model innovation), which are highly ambiguous in the current literature. From this, we discuss a holistic typology of incumbent responses to disruptive business model innovations in their industries, embracing two generic business model change strategies: explorative adoption of the disruptive business model, and exploitative strengthening of the existing business model (Osiyevskyy & Dewald, 2015a). Then, we propose a behavioral model of incumbent firms’ responses to disruptive business model innovations gaining momentum in their industries; the model describes the observed behavioral patterns in disrupted industries, explaining incumbent actions and reasons why these actions might deviate from the rational path. The behavioral response model is supplemented by a rational response model, comprising a set of testable propositions regarding the contingency factors determining optimal incumbent actions when facing a disruptive business model innovation. Finally, we enhance the insights of the rational and behavioral models with the real options lens to formulate a set of normative recommendations for managers of real-world established firms having to make decisions regarding nascent or gaining momentum disruptive business model innovations in their industries. Overall, the developed models stress that the firm’s response is an appropriate unit of analysis of situations of ongoing disruptive business model innovations, and that the actual responses are determined by managerial cognition, organizational context, and market factors.
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RESPONSE MODEL: A TYPOLOGY Disruptive Business Model Innovations: Clarification of the Concepts Business Model Before developing the theoretical models, we must first clarify the definitions of concepts used in further theoretical reasoning. The first and most important concept needing clarification is a business model, which still lacks consensual definition in existing literature, despite growing understanding of its importance (Karimi & Walter, 2016; Zott, Amit, & Massa, 2011). Authors of papers of the business model concept often study it without explicit definition, or propose competing definitions (Foss & Saebi, 2018). For instance, the essence of a business model was defined as an “articulation between different areas of activity” (Demil & Lecocq, 2010), “design or architecture” (Teece, 2010), “specific combination of resources” (DaSilva & Trkman, 2014), among other things (Zott et al., 2011). This lack of clear definition of the key construct is typical for a pre-paradigmatic stage of science, in which the literature on business models is currently situated. Yet, these conflicting definitions of the essence of a business model makes its theoretical development problematic; moreover, most of the proposed definitions (such as “architecture,” “design,” “conceptual tool or model”) prevent conceptual linking of the business model concept with the existing body of knowledge in management studies, a necessary step for deductive development of models involving business models concept. To overcome this obstacle, we anchor on a definition of a business model that combines the essential salient features of prior conceptualizations, while at the same time providing a clear link to established management theories. Functionally, a firm’s business model is an interrelated set of routines for: (a) creating economic value for firm’s stakeholders, and (b) appropriating part of this value for the firm itself and its shareholders (Biloshapka & Osiyevskyy, 2018; Osiyevskyy & Zargarzadeh, 2015). In this definition, the term “interrelated set of routines” is used in the sense of the evolutionary theory of the firm (Nelson & Winter, 2009), as a complex regular behavioral pattern within a firm—used for value creation and appropriation. Notably, in line with this definition a firm can have more than one business model (if the value is created and appropriated in more than one distinct way), or have no business model at all (if no regular behavioral pattern for value creation and appropriation is established). As any other routine, a business model can become a capability underpinning the firm’s competitive advantage (Casadesus-Masanell & Ricart, 2010; Markides & Charitou, 2004), provided that a set of conditions are met (e.g., the VRIN framework of Barney [1991]). Structurally, a business model as a routine comprises three major interrelated dimensions
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(George & Bock, 2011; Osiyevskyy & Dewald, 2015b): value structure (value propositions for each stakeholder), transactive structure (organization and governance of exchanges within and across the firm boundaries), and resource structure (unique combination and organization of resources through which transactions create value (DaSilva & Trkman, 2014). Business Model Change and Innovation As any type of routine (Nelson & Winter, 2009), business models are in a state of constant change. Hence, a static view of business models as interrelated value, resource and transactive structures tells only half of the story; the other essential half is the dynamic, transformational view of the business model evolution (Demil & Lecocq, 2010). In line with this reasoning, business model change is conceptualized as any alteration of the existing business model of a firm (Osiyevskyy & Dewald, 2015a; Osiyevskyy & Zargarzadeh, 2015), either radical (major shift in one or more dimensions of a business model), or incremental (progressive refinement of individual components). In terms of novelty, the general business model change concept includes both business model innovations (“new to the world” changes introduced in the industry for the first time) and imitative business model changes (“new to the firm” changes that copy approaches of competitors or firms from other industries). The latter distinction allows differentiating the broad term of business model change from its partial exemplar, business model innovation (BMI), which represents intentional, unique for the industry change of the firm business model in response to perceived opportunity to make it more effective or efficient (Osiyevskyy & Zargarzadeh, 2015). Business model innovations can be introduced by newcomers (Christensen, 1997) or diversifying entrants from adjacent industries (Tripsas, 1997), or by entrepreneurial established players (Karimi & Walter, 2016; Schumpeter, 1934). If the introduced BMI proves its potential, the remaining incumbents often learn about this, and respond by imitating and copying it (CasadesusMasanell & Zhu, 2013). A relatively broad topology of BMIs (according to their essence) was proposed in Giesen, Berman, Bell, and Blitz (2007), distinguishing among industry model innovations (redefining the industry or creating a new one), revenue model innovations (reconfiguration of product offering and pricing), and enterprise model innovations (changing the role of a firm in the value chain). Disruptive Business Model Innovations They represent a particular type of BMI that is initially “financially unattractive for the leading incumbent to pursue, relative to its profit model and relative to other investments that are competing for the organization’s resources” (Christensen, 2006, p. 49). Being perceived by incumbents
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and their most valued customers as inferior, the innovation seeks to find a customer base, often among price-sensitive non-consumers who cannot pay for the full-featured products or services, or among consumers who value different product or service attributes comparing to those emphasized by traditional business models (Christensen, 1997; Markides, 2006). As Christensen (1997) demonstrates, with time the prior “inferior” disruptive innovation gains momentum, develops, and ultimately surpasses the requirements of mainstream customers, who eventually switch to the new alternative. As such, disruptive BMI manifests a discovery of a fundamentally different routine for value creation and appropriation, which usually enlarges the existing market by either attracting new customers or encouraging the existing ones to consume more (Markides, 2006). One important fact differentiates disruptive technological innovations from disruptive BMIs: Whereas the materialization of a disruptive technology in most cases leads to displacement of prior, established technology (Christensen, 1997), the rise of disruptive business models rarely eliminate prior business models in their industries (Markides, 2006). In most cases, disruptive business models gain some market share, extend the overall market, and then compete and co-exist with established ones. Indeed, “several value propositions may coexist within a specific industry” (Sabatier, CraigKennard, & Mangematin, 2012, p. 950), with several business models successfully co-existing. Responses to Disruptive Business Model Innovations: Existing Approaches When facing disruptive BMIs introduced and gaining momentum in their industries, managers of incumbent firms must make decisions regarding appropriate responses to them. As it was stressed at the beginning of the chapter, even though the question of optimal response to disruptive innovations was extensively scrutinized in the management literature (autonomy, risk-taking, and proactiveness of managers has positive association of successful adoption of disruptive BMI (Karimi & Walter, 2016), it is still far from being resolved (Christensen, 2006), particularly for the case of disruptive business models. The early approaches suggest establishing autonomous business units (spin-offs) to explore disruptive BMIs (e.g., Christensen, 2006; Christensen & Raynor, 2013). Yet, this model implicitly assumes that incumbents should respond to every potential disruption in their industries, which is far from optimal (Markides, 2006; Markides & Charitou, 2004). Some disruptive BMIs never gain momentum, and pursuing each of them might be a waste of resources. Moreover, the discussed above fact that more than one
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business model can coexist in the same industry suggests other possible incumbent responses, such as ignoring the disruption and concentrating on existing business model (e.g., not all universities should switch to on-line delivery, and not all airlines should become low cost). The action-response framework of Charitou and Markides (2003) moves the discussion much closer to a desired theoretical explanation of the optimal incumbent response to disruption. Starting with the observation that incumbents do not have to respond to every disruptive BMI by adopting it, the researchers propose a more sophisticated variation of incumbents’ responses. The inductively developed action-response framework embraces five basic responses: (a) focusing on traditional business, (b) ignoring the innovation, (c) attacking back through new disruption, (d) adopting the innovation by playing both games at once, and (e) embracing the innovation and scaling it up. This work provides an important comprehensive perspective on incumbent responses, and hence represents a step towards building the theory of response to disruptive innovations. The inductive origins of the action-response framework leave unanswered the question of its scope and parsimony: One cannot say for sure whether the proposed sets of actions embrace all possible responses, whether the proposed actions are not overlapping, and whether they are responses to disruption. Moreover, the normative implications of Charitou and Markides (2003) need further elaboration. Based on juxtaposing of only two factors (ability to respond and motivation to respond), the recommendations leave too much ambiguity: for example, in the case of high levels on both factors, we have three plausible solutions (adopt and separate, adopt and keep internal, and attack back). Additional contingencies must be taken into account to resolve these ambiguities. To some extent, these were resolved in further studies of organizational ambidexterity (O’Reilly & Tushman, 2008); yet, these separate bodies of literature are still not integrated into a holistic deductive model. Typology of Responses The first step in developing a model of incumbents’ responses to disruptive BMIs is in clarifying the potential types of responses. Such typology provides a context from which to describe and discuss the dynamic process of responding to a BMI. On a broad level, when faced with a gaining momentum disruptive BMI, an established company can choose to respond or ignore it. The active response choice can follow two generic strategies (Osiyevskyy & Dewald, 2015a): (a) strengthening the existing business model, or (b) adopting a disruptive business model (pure imitating, or imitating some elements with adaptations to match the company’s
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existing competencies and capabilities). This choice is consistent with the traditional distinction between the exploitation of established certainties and exploration of new opportunities in organizational learning (March, 1991), or distant and local search (Rosenkopf & Nerkar, 2001; Stuart & Podolny, 1996). Notably, these two generic response strategies are distinct, but not mutually exclusive to one another. Each strategy implies a change of the existing business model, since to match the explorative or exploitative approach, the firm has to reconsider the business model’s value, transactive and resource structures (Osiyevskyy & Dewald, 2015b), including alteration of established policies, assets configuration and choice of governance (Casadesus-Masanell & Ricart, 2010). The first generic response strategy—explorative adoption of the disruptive business model (explorative business model change)—implies imitating the disruptive business model or some of its essential elements (Osiyevskyy & Dewald, 2015a, 2018). This change is radical in nature, putting a company on a change trajectory outside linear (incremental) refinement of the existing business model. This often leads to changing the value proposition to firm customers, manifested in offering different products or services, changes in the way of delivering them, rethinking the methods of payment or price policy. In its turn, change in value proposition usually demands to reconsider the supporting transactive and resource structures of the business model (Osiyevskyy & Dewald, 2015b). The explorative adoption of the disruptive business model has two important features. First, finding the right way to adopt the disruptive business model does not happen overnight; rather, it is a learning and experimentation process requiring significant changes with following progressive refinements to achieve internal and external consistency—among business model elements and with external environment, respectively (Demil & Lecocq, 2010; McGrath, 2010). Indeed, “an emerging dynamic perspective sees business model development as an initial experiment followed by constant revision, adaptation, and fine-tuning based on trial-and-error learning” (Sosna, Trevinyo-Rodríguez, & Velamuri, 2010, p. 384). Second, explorative adoption of the disruptive business model often implies searching for elements that work as a specific fit to the unique context of the existing company (peculiar assets and capabilities), rather than mere imitation of the disruptive approach. Pure imitation usually deprives incumbents of the first-mover advantage in the emerging market; instead, the rational response supposes coming out with original model tailored to a particular firm (Markides & Oyon, 2010). The second strategy—exploitative strengthening of the existing business model (exploitative business model change)—implies incrementally changing the established business model (along the linear trajectory), to protect from disruptive newcomers (Osiyevskyy & Dewald, 2015a). The goal of this
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strategy is in creating exclusive or monopoly rents in a particular market segment (Porter, 1980) and isolating the firm from the impact of disruptors. Christensen and Bower (1996) provide an example of such strategy, a typical response of incumbents when facing a disruptive innovation: Following their most valuable customers, the firms usually migrate to a high-end market, incrementally augmenting their products or services by adding sophisticated features that up-market clients should appreciate. Notably, the incumbents’ choice of exploitative rather than explorative business model change can be a rational choice: As it was stressed before, even if a disruptive BMI gains momentum, in most cases, it does not overtake the whole market (Markides, 2006). In other words, a disruptive BMI might leave lucrative niches for incumbents to occupy, and hence exploitative strengthening of the existing business model to build strong positions in these niches might be a rational strategy. Applying these two strategies as orthogonal axes yield the 2 × 2 matrix (Figure 5.1) of incumbent responses to gaining momentum disruptive BMIs (Osiyevskyy & Dewald, 2015a). The generic response strategies (with regards to a disruption) are similar to firm’s positioning—with regards to competition in its industry—for example, frameworks of Porter (1980) or Miles, Snow, Meyer, and Coleman (1978), being dynamic and pre-determined by market forces and organizational characteristics. The incumbents in Group 1 defend the existing business models without adaptations (Defiant Resistance). Examples of such response are numerous, particularly in the early stages of disruption: Consider commercial banks ignoring the peer-to-peer lending (“The Last Kodak Moment,” 2012), or the U.S. public school system, mostly ignoring the online models of class delivery (Christensen, Johnson, & Horn, 2010). Companies from
Explorative and Adoption of the Disruptive Business Model (Explorative Change) No Yes
Exploitative Strengthening of the Existing Business Model (Exploitative Change) No Yes
Group 2: Pure Exploration: Adoption of the new business model
Group 3: Integration: In one company or in autonomous unit
Group 1: Defiant Resistance: Defend habitual routines
Group 4: Pure Exploration: Incremental innovating of the existing business model
Figure 5.1 Typology of incumbent firm’s responses to disruptive innovations. Source: Adapted from Osiyevskyy & Dewald (2015a).
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this group not only decline to change their business models but also are likely to proactively resist changes, lobbying for the legislative prohibition of disruptive innovations (Dewald & Bowen, 2010). Notably, the Defiant Resistance response strategy is a natural position for firms to adopt before a disruptive innovation has proven its market potential. Group 2 consists of firms pursuing a Pure Exploration strategy. These incumbents adopt the disruptive business model or its essential elements without the simultaneous development of the existing business model or attempting to integrate the development of both models. The adoption of a disruptive business model can be done either by switching to it entirely or by simply neglecting the existing business model, depriving it of further investment and instead focusing on developing the new one. This is a generic strategy of agents of the Schumpeterian creative destruction, either entrepreneurial incumbents or newcomers. Group 4 includes the companies pursuing a Pure Exploitation strategy, which strengthens their existing business models without adopting any elements of the disruptive approach. Unlike members of the Defiant Resistance group, companies pursuing pure exploitation are engaged in incremental changing of their established business models. In an attempt to defend the status quo in the way business is done, and exploit the previously effective resources and capabilities possessed by the firm, managers of these firms look for incremental adjustments and refinements, such as going to upper segments of the market (protected from inferior disruptors) or differentiating (to enjoy monopoly power). Lastly, incumbents of Group 3 (Integration) attempt to benefit from both models, simultaneously adopting the elements of the disruptive innovation and leaving the door open for other opportunities in the existing business model (“Playing Both Games at Once,” in the words of Charitou and Markides [2004]). This can be achieved either through the integration of both models in the same business unit or through unrelated diversification using an autonomous business unit (spin-off). The former approach implies leveraging the synergies between business models by reinforcing their strengths. The spin-off approach, on the other hand, supposes that the new business is developed simultaneously but independently from the established one (the early recommendation proposed for responding to a technological disruption [see Christensen, 1997; Christensen & Raynor, 2013]). Nevertheless, this approach can lead to an ambidexterity challenge, which includes challenges of managing two different and conflicting business models simultaneously (Markides, 2013). The incumbent firms can overcome the challenge by aligning “complementary assets with earlier addition of the new business model and conflicting assets with an autonomous business unit for the new business model” (Kim & Min, 2015, p. 34).
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BEHAVIORAL RESPONSE MODEL: A TYPICAL EVOLUTION OF A DISRUPTED INDUSTRY Further development of the response model will proceed along two directions: behavioral and rational paths. Whereas the rational response model concentrates on the question of what incumbent firms should do when facing a disruptive BMI in their industries, as discussed in this section, behavioral response model studies their actual behavior, in terms of a typical pattern of disrupted industry’s evolution. The fundamental premise of the developed behavioral response model is considering disruption as a dynamic process rather than a one-time event. Indeed, from all disruptive BMIs that materialized (overtaking substantive part of established markets), not a single one did so overnight; rather, any nascent disruption needed time to gain momentum: “It indeed is a process, not a cataclysmic event” (Christensen, 2006, p. 50). We assert that the typical incumbent response to an emerging disruptive BMI is contingent upon the stage of disruptive innovation’s development, and hence the typical established industry’s response should be considered from a dynamic evolution perspective. In the majority of cases, this evolution will include three stages (Figure 5.2). Stages of Disrupted Industry’s Evolution Stage One In the first stage, the emerging disruptive BMI does not have the necessary momentum to become salient enough to be perceived seriously by major incumbents. Managers of incumbent firms, so as their best customers, tend to focus on inferior aspects of the disruption, making it easy to Stage 1
Stage 2
Pure Exploration Integration
Pure Exploration Integration
Pure Exploration
Pure Defiant Resistance Exploitation
Defiant Resistance
Defiant Resistance
Pure Exploitation
Stage 3 Integration
Pure Exploitation
Figure 5.2 Three stages of industry evolution in reaction to disruptive business model innovation.
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ignore. The disruptive offering seems to appeal to only a small subset of customers, promise insufficient financial returns and looks like a fleeting, short-term, non-serious threat. As a result, the majority of incumbents stick with the traditional business model. The rationale behind these actions is obvious: While requiring a rethinking of the whole business model, the disruptive offering is simultaneously “inferior” in terms of traditional performance measures, appeals to a different (or unknown yet) group of customers, and does not fit traditional business performance evaluation models. Therefore, on the first stage of disrupted industry’s evolution, the dominant incumbent response is Defiant Resistance (akin to “Ignore the Innovation—It’s Not Your Business” in Charitou and Markides, [2003]). As an example, consider the traditional book retail industry in 1995–1997, with Borders and Barnes & Noble being major specialized competitors, sharing the book market with generalist retailers like Costco and Walmart. In those days, the emergence of a pure online book retailer with totally new disruptive business model—Amazon (founded in 1995)—did not lead to any substantive reaction of incumbents (i.e., Defiant Resistance response). Barnes & Noble opened its online bookstore only in 1997 (although without a significant emphasis on it); while Borders allowed Amazon to handle its Internet sales—a mistake that would lead to fatal consequences later (Hitt, Ireland, & Hoskisson, 2016). There are two basic mechanisms which lead to Defiant Resistance as a dominant response of most incumbents in the early stage of disruptive BMI emerging in their industry: cognitive and structural ones. On the level of managerial cognition, in the first stage of industry disruption, there is a set of factors that were shown to cause rigidity (or reduce intentions to change the business model in an explorative way) in the decision making of the managers of incumbent firms. First, the framing of the market potential for the disruptive business model is formed by managers’ prior industry affiliations, beliefs, and experiences (Benner & Tripsas, 2012; Tripsas & Gavetti, 2000), biasing their search activities in favor of existing approaches and business models (Tripsas & Gavetti, 2000). Indeed, “managers of established firms, whose perspectives are deeply entrenched and largely shaped by their current experiences, tend to ignore these new low margin segments and focus on their existing customers and markets” (Crockett et al., 2013). Second, the disruptive business model is not salient enough from the point of view of managers of established businesses; hence, they perceive no major threat or opportunity from it, while these two latter factors were found to be significant drivers of explorative business model change intentions (Dewald & Bowen, 2010; Osiyevskyy & Dewald, 2015b). Finally, any nascent market sparked by a radical change, including the market of a disruptive business model, is characterized by major ambiguity and
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uncertainty (Benner & Tripsas, 2012). This low level of predictability also constrains the intentions to explore the new business model. From the perspective of structural (non-cognitive) impediments for business model change on the first stage of disruption, Christensen (1997) found that incumbents rely on the advice of existing customers who do not value the specific benefits of the disruptive innovation. In addition, Charitou and Markides (2003) cite a focus on considerable prior investments in existing business (omnipresent problem of sunk costs), having more important issues to deal with in existing business, an objective need for further analysis of the situation, a lack of necessary resources for entering new business, or simply bad timing to enter as specific reasons for incumbent firms to adopt a Defiant Resistance position. Despite the cognitive and structural barriers, the other incumbent responses are possible in the early, first stage of the disrupted industry’s evolution. They may take the form of a Pure Exploration, embraced by rare incumbents that are predisposed towards the disruptive business model. An example of the latter non-dominant response is the proactive engagement of the University of Phoenix in the United States, Open University in England, and Athabasca University in Canada in online education. All these institutions were predisposed towards online education, because of the prior experience of correspondence course delivery and the emphasis on increased enrollment of diverse students from other geographical regions as an engine for further development. Stage Two If the disruptive BMI does not die or flatten out on the first stage and keeps on gaining momentum, with time this disruption becomes too visible for incumbents to ignore; this change manifests the beginning of the second stage of the disrupted industry’s evolution. At this point, the disruptive approach starts threatening the managers of incumbent firms, requiring a proactive response. In most cases, this proactive response usually implies the dominant reaction of exploitative development of the traditional business model (Pure Exploitation), aiming at protecting from the threat posed by the disruption by increasing the customers’ value to prevent the latter from switching to the disruptive alternative. This development is usually done through marginal incremental changes, rather than drastic, radical innovations (Demil & Lecocq, 2010). For instance, in traditional real estate brokerage, disrupted by discounted offerings and Internet technologies, these incremental innovations could include supplementing traditional broker’s services of facilitating the transaction (search, negotiations, and
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legal details) with help in getting mortgage, in renovation of newly bought houses, or in preparing the real estate for sale (Osiyevskyy & Dewald, 2015b). Prior research demonstrates that Pure Exploitation is the quadrant where the majority of industry incumbents migrate after the disruption becomes too visible to ignore (Christensen, 1997). The rationale for the Pure Exploitation response suggests that the firms protect their “premium” position from discounting newcomers through enhanced differentiation (Porter, 1980). In the case of retail bookselling, the Pure Exploitation as a dominant response in Stage 2 of the disrupted industry’s evolution was manifested in the Borders’ strategy in 1997–2009: indeed, while significant visible changes were happening in the industry (customers shopping for books online, growing popularity of electronic books for e-readers), “Borders invested heavily to enhance the marketing for traditional bookselling” and “tried to lure customers to its stores with promises of enriching experience” (Hitt et al., 2016, p. 3). No major attempt to explore the disruptive business model by Borders was noted; all this time, the company’s online sales operations were outsourced to Amazon. Christensen (1997) clearly described the flaws of this response, noting that at a certain point mainstream customers become “overserved” and readily switch to the less costly disruption, once it meets their minimum performance requirements (“performance overshooting”—e.g., Bergek, Berggren, Magnusson, & Hobday, [2013]). This fulfills the innovator’s “dilemma.” To make things worse, concentrating on strengthening the existent business model distracts managers from scrutinizing the benefits of disruptive innovation and from getting the experience of working with it. The second stage of the industry disruption requires a proactive response from incumbents. Two main mechanisms drive the exploitation (rather than exploration or some combination) as this proactive response. From the managerial cognition perspective, the main obstacle for explorative adoption of the disruptive business model is the cognitive inability of managers of incumbent firms to understand the opportunity and value potential of the disruptive approach (Tripsas & Gavetti, 2000; Zott et al., 2011). Yet, managerial cognition is not the only obstacle; there is also a set of structural factors preventing explorative change: As Teece (2010) succinctly summarizes a large body of literature on the topic, “changing the firm’s business model literally involves changing the paradigm by which it goes to market, and inertia is likely to be considerable” (p. 187). This inertia is sometimes referred to as handicap of the incumbents (Tripsas, 1997), when the organizational structures, routines and procedures fine-tuned for the existing business model constrain any explorative business model change. Nevertheless, despite the hardships, some incumbents demonstrate non-dominant responses in Stage 2, of which the most important one is
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Integration, embracing both explorative and exploitative changes of the firm’s business model. A salient example of this strategy is that of Barnes and Noble in 1997–2009, implying integration of the established business model (brick-and-mortar retail stores) with online selling (through Barnesandnoble.com) and selling e-books (using original Nook eReader). Stage Three Finally, the last, third stage of the disrupted industry’s evolution, starts when the disruptive business model becomes too lucrative or threatening to procrastinate or delay its adoption any more. At this time, the disruption’s market potential becomes apparent, so as the performance overshooting of the traditional business model (Christensen, 1997; Crockett et al., 2013). At this time the majority of incumbents start looking for the ways to integrate both models, by pursuing the integration strategy (combination of both explorative and exploitative business model change), either through internalization of both models within one unit, or through a related diversification (spin-off or autonomous business unit for pursuing disruptive opportunity). It is in Stage 3 when the flaws of the dominant response in the prior Stage 2 become apparent, as the previously pursued pure exploitation did not allow building competences and acquiring the resources necessary for exploring the disruptive business model. Consider the case of Borders: At Stage 3 of the evolution of disrupted retail bookselling industry (in 2010–2011), it was too late to start selling books online; the chance to develop this capability was lost in 1995–2009 when these operations were outsourced to Amazon. As a result, in 2011, Borders declared bankruptcy. Barnes and Noble, on the other hand, was relatively successful pursuing the integration strategy in Stage 3 of the disrupted industry’s evolution, as the potential for this was developed in Stage 2, through experimenting with the disruptive business model (through the company’s online bookstore and the eBook reader). However, the anecdotal evidence of the retail book industry does not imply that the dominant behavioral response in Stage 3—integration—is always the optimal one. Arguably, the other three response strategies (including even Defiant Resistance) could be viable for particular incumbents, contingent on their internal situation and market conditions. This issue is elaborated in detail in the next section, discussing the rational response model. One last observation is worth noting with regards to non-dominant responses, particularly Pure Exploration. On any of the three stages of the disrupted industry’s evolution, this strategy of incumbents (i.e., embracing the new business model while neglecting the old one) is highly unlikely. First, it is hard to abandon the core business model, which can still be profitable, in order to switch to something new. Secondly, this transition would require significant alteration of all aspects of business, including resource structure,
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processes organization, and even ways of thinking. One more important reason for not pursuing this option is strategic consideration: When making this switch, a firm will not be able to leverage the existing resources and competencies, having to build new competencies and to acquire necessary resources from scratch, without any advantage over disrupting newcomers. Rational Determination: Critical Determinants of the Impact of Disruptive Innovations Having provided a descriptive overview of the behavioral response patterns of incumbents in disrupted industries, in this section, we develop propositions and provide a richer understanding of rational responses to disruptive BMI, acknowledging the complexity and dynamics of change, and the cognitive and structural drivers of firms’ actions. Rational response model is intended to provide testable propositions concerning the appropriate response of an incumbent firm when facing a disruptive BMI introduced in its industry. The unit of analysis within the proposed model is disruptive BMI by the company. This statement stresses the fact that a single disruption can require heterogeneous responses from different companies (Bergek et al., 2013; Yu & Hang, 2010), as well as that a single company cannot have a unified approach towards all disruptive BMIs (Charitou & Markides, 2003). Therefore, the model links drivers of responses (innovation-related—market drivers; company-related—organizational enablers) with an optimal response strategy, formulated in terms of explorative or exploitative change of the existing incumbent’s business model. The two dependent variables are expected performance outcomes of explorative and exploitative business model changes in response to disruption, reflecting the impact of embracing each of these response strategies on the longterm financial performance of an incumbent firm. Schematically, the discussed in the next section’s model is presented in Figure 5.3. The Role of Market Drivers The innovation-related determinants of the appropriate incumbent response are summarized in the concept of market drivers. The first determinant, market propensity, reflects the potential demand for the offering of the disruptive BMI (demand for its value proposition to customers), comprising the demand from prior non-consumers and the demand from part of the customers served by the existing business model who migrate to the offering of the disruptive business model. The first component of the demand for the disruptive BMI is particularly noteworthy,
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+ (P1)
+ (P2)
Expected outcome of explorative change + (P3)
– (P4)
+(P5)
Complementarity of Business Models: Complementary capabilities
Expected outcome of exploitative change
Organizational Enablers: 1. Slack Resources 2. Specialized Complementary Assets 3. Organizational Learning Capabilities 4. Resource Flexability
Figure 5.3 Rational response model: Expected outcomes of explorative and exploitative business model changes.
since, as it was noted before, the disruptive innovations usually expand the customer base, attracting former non-consumers (Christensen, 1997; Markides, 2006). The second component of the demand for the disruptive BMI, driven by the migration of consumers of conventional business model, is determined by the propensity of existing customers to switch to the disruptive approach. The ultimate characteristic of the market propensity is the potential for economic value appropriated by an incumbent when serving the customers using the disruptive business model, compared to the value appropriated using the existing business model. The higher the market propensity of the disruptive BMI for a particular incumbent, the higher is the expected outcome of responding to it. Market propensity, in its turn, is influenced primarily by the evolution of customer needs (in the dimensions of performance, functionality, convenience, simplicity, and price (Christensen & Raynor, 2013). The market propensity is not the sole essential factor determining the appropriate incumbent response, as not all disruptive innovations can be exploited despite their market potential. Consider numerous disruptive innovations in healthcare (such as empowering professional nurses) that cannot be implemented despite the obvious market potential for them; these innovations first need to gain legitimacy in the eyes of powerful stakeholders in the healthcare industry. Hence, the second crucial factor, innovation legitimacy, determines whether the offering of the disruptive business model (value proposition to customers) is perceived as legitimate by key stakeholders in the industry. Any changes or innovations in organizational practices,
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forms, or policies require legitimization before being perceived as an objective reality (Tost, 2011) and being allowed to be implemented. In addition to individual-level legitimacy from the customer perspective, a disruptive BMI also often needs explicit endorsing by the institutional environment through regulatory actions (Kaplan & Tripsas, 2008), such as implicit or explicit approval by regulators, who “measure, credential, or certify innovations” (Ansari & Krop, 2012). Hence, on the most basic level, the innovation legitimacy comprises two components—subjective legitimacy (the evaluation of the innovation by important decision makers [namely, customers] and their influencers), and legal legitimacy (the endorsement of the innovation by authorities, such as government regulators or accrediting bodies). Therefore, the combination (mathematically: interaction) of market propensity and legitimacy of the disruptive business model determines the salience of market drivers of response to the emerging innovation. A low level on either of these two components prevents the disruptive BMI from gaining momentum; moderate or high levels of components reinforce each other. Ceteris paribus, the higher the market drivers of the disruptive innovation for a particular incumbent firm, the higher is the expected outcome of its embracing: Proposition 1: Market drivers are positively associated with the expected performance outcome of the incumbent’s explorative business model change in response to a disruptive business model innovation. However, market drivers of a disruptive BMI facilitate not only its explorative adoption. Even the incumbents who respond in an exploitative manner will still benefit from doing so when facing a disruptive BMI with high market drivers. First, as it was already argued, disruptive BMIs usually expand the industry by appealing to non-consumers, and exploitative strengthening of the existing business model can help an incumbent to benefit from this expansion. Second, if the disruptive business model gains momentum (which is more likely in the case of innovations with high market potential), an incumbent will have to compete with disruptors in the future, and exploitative strengthening of the existing business model will help to protect its market position. Therefore, all other things being equal, exploitative strengthening of the existing business model in response to a disruptive innovation with high market drivers is a rational action: Proposition 2: Market drivers are positively associated with the expected performance outcome of the incumbent’s exploitative business model change in response to a disruptive business model innovation.
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The Role of Organizational Enablers In the prior section, we postulated that external market drivers make a proactive business model change (explorative or exploitative) the optimal incumbent strategy when faced with a disruptive BMI. The exact nature of the best response—explorative change, exploitative change, or integration— is determined by internal organizational factors—enablers of the disruptive business model change. The latter term refers to internal contextual factors that make embracing the disruptive business model a viable option. The first crucial organizational enabler is the availability of slack resources necessary for explorative business model change (Hill & Rothaermel, 2003). Explorative business model change often requires long-term investment with uncertain outcomes, and unless an incumbent possesses or can acquire the necessary resources (from existing operations or external sources), explorative change cannot be a viable option. Indeed, the high level of available slack allows an organization to take additional risks and experiment (Mone, McKinley, & Barker III, 1998). This argument is supported by the behavioral theory of the firm (Cyert & March, 1963), arguing that, “slack provides a source of funds for innovations that would not be approved in the face of scarcity but that have strong subunit support” (Cyert & March, 1963, p. 189). Moreover, slack buffers an organization from the downside risk associated with a significant change, and increases the change’s legitimacy in the eyes of powerful stakeholders (Singh, 1986). In the case of explorative business model change, the slack resources can be utilized for acquiring generic complementary assets necessary for the change, and for initial launching (experimenting, refinement) of the new business model, until it becomes sustaining. The second organizational enabler of explorative business model change is the availability of specialized complementary assets necessary for the new business model. Adding this enabler is justified by the assumption that BMI requires additional complementary assets (or capabilities) for its deployment in a particular company. Unlike generic complementary assets (which are freely available on the market and are not company-specific), specialized complementary assets are company-specific, and hence must be developed internally. Specialized complementary assets necessary for the disruptive business model can buffer incumbents from the competition and facilitate value appropriation from this innovation (Ansari & Krop, 2012; Teece, 1986; Tripsas, 1997). Examples of such complementary assets include, inter alia, specialized manufacturing capabilities and sales/service networks (Tripsas, 1997), strong brand name and corporate reputation (which will make innovation’s legitimization and endorsement more easy), or unique network of partners (alliances, joint ventures) supporting the value chain activities necessary for the new disruptive business model.
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An explorative business model change is possible only if an incumbent possesses the organizational learning capabilities, in that the proper new business model, suiting both external conditions and internal context, can rarely be apparent early on, and those organizations that are well positioned to learn and adjust are more likely to succeed (McGrath, 2010; Teece, 2010). We argue that two key organizational learning capabilities are absorptive capacity and learning orientation. Absorptive capacity (Cohen & Levinthal, 1990; Zahra & George, 2002) represents the incumbent’s ability to recognize the value and essential features of the disruptive business model, to assimilate the available knowledge about it, and to apply this knowledge for planning and executing the actual explorative business model change. As such, absorptive capacity is essential for triggering the explorative business model change. As it was argued before, explorative business model change is not only a one-time radical change but also the following process requiring continuous refinements, adjustments, and learning, as a new sustaining business model cannot be conceived and created at once. Hence, whereas the conceiving of the explorative change is facilitated by absorptive capacity, the crucially important further adjustments require an organizational commitment to learning, open-mindedness, and knowledge-questioning values—a culture of learning orientation (Baker & Sinkula, 1999; Sinkula, Baker, & Noordewier, 1997). Finally, an explorative business model change is facilitated if an incumbent has resource flexibility, or the ability to redeploy the available resources for the disruptive BMI. In some cases, the lack of resource flexibility might lead to lock-in and pursuing the conventional business model. For instance, the traditional airlines might be prevented from a rapid switch to discounted models by existing union agreements, or the traditional steel plants might be stuck with the old, integrated mills technology because of the prior significant investments into the plants (which cannot be easily redeployed to pursue the disruptive mini-mills model). In summary, the high level of organizational enablers makes explorative business model change the better option in cases of high market drivers of disruptive BMI: Proposition 3: Organizational enablers strengthen the positive association between market drivers and expected performance outcome of the incumbent’s explorative business model change in response to a disruptive business model innovation. On the other hand, in case of exploitative strengthening of the existing business model in response to high market drivers of disruption, the organizational enablers (which are aimed at facilitating explorative adoption
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of the disruptive business model) become wasted resources, reducing the overall performance outcome. In other words, in the situations of high market drivers, the exploitative business model change becomes an appropriate proactive response only if the organizational enablers are low: Proposition 4: Organizational enablers weaken the positive association between market drivers and expected performance outcome of the incumbent’s exploitative business model change in response to a disruptive business model innovation. The formal Propositions 1–4 can be briefly summarized as follows: If the market drivers are low, the only optimal incumbent response to a disruptive business model innovation is Defiant Resistance; if the market drivers are high, the optimal response is explorative business model change (in case of high enablers) or exploitative business model change (in case of low enablers).
In other words, as the moderator (organizational enablers) changes on a continuum from low to high, the slope of the “Market Drivers → Outcome of the explorative change” line goes up (counterclockwise), while the slope of the line “Market Drivers → Outcome of the exploitative change” goes down (clockwise). This framework ignores one important response—integration (both explorative and exploitative changes)—that becomes a viable option in the case of substantive synergy effects between existing and disruptive business models in an incumbent firm. The Role of Synergy Sometimes, each business model (existing and disruptive) can reinforce the performance outcome of the other one. Both models can leverage the same complementary assets and capabilities (e.g., sales and support channels, brand name, the corporate reputation of the parent company, technological expertise), achieving by this means economies of scale and scope. An example of this mechanism can be found in the airline industry, where conventional and low-cost business models can share a substantive amount of complementary capabilities (airport infrastructure, trained personnel, IT systems, etc.), leading to a synergistic effect from both explorative and exploitative business model changes. In such cases, simultaneous pursuit of both exploitative strengthening of the existing business model and explorative adoption of the disruptive business model will reinforce the positive performance outcome of both actions:
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Proposition 5: Synergy between existing and disruptive business models (achieved through exploitation of complementary capabilities) increases expected performance outcomes of both exploitative and explorative business model changes. Notably, provided the substantive synergy between existing and disruptive business models, the optimal incumbent response to disruptive BMI in cases of high market drivers becomes integration, comprising both explorative adoption of the disruptive business model and exploitative strengthening of the business model, regardless of the level of organizational enablers. In the case of low synergy, on the other hand, the optimal response to disruption is governed by Propositions 1–4. The Dynamic Perspective The whole prior argument is based on the static analysis of the determinants of the rational response of incumbents to gaining momentum disruptive innovations; in other words, the propositions are formulated without considering the temporal dimension of the disruption phenomenon. In the real world, both market drivers and organizational enablers are not time invariant. Particularly, most salient changes with time happen along the three dimensions. First, the market propensity develops, driven by the evolution of customer needs (performance, functionality, convenience, simplicity, price; Christensen & Raynor, 2003). Second, the innovation legitimacy changes over time, particularly its regulatory aspect, as sooner or later, the authorities endorse the more efficient disruptive approach. Finally, the organizational enablers are not time-invariant, in that with time, the organization might acquire or develop the necessary specialized complementary assets, needed for embracing the disruptive approach. These three types of change shift the market drivers and organizational enablers of disruptive innovation; ergo, the rational response of an incumbent can change with time. This warrants the dynamic investigation of the rational response, depending on the time-variant parameters. NORMATIVE RECOMMENDATIONS Real Options to Manage Contingency Like all other models discussed in this chapter, the rational and behavioral response models have their shortcomings and limitations when providing normative recommendations for the managers of real-world companies
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having to choose a response strategy when facing a gaining momentum disruptive BMI. The behavioral model explains the typical response evolution within an industry as the disruption gains momentum, remaining ignorant about performance implications of particular actions. The rational model provides valuable insights regarding the optimal response but demands the ability to accurately predict the exact values of contingency factors (market drivers, organizational enablers, and synergy). As such, it can be very valuable for explaining the performance differential of heterogeneous incumbent responses ex-post (after the disruption gained momentum or flattened out), but has limited use for providing ex-ante guidance for managers of established incumbent firms. In fact, it is the rational model’s unrealistic demands for available information and the decision maker’s cognitive abilities that leads to prevalent patterns of incumbent actions in the behavioral model, which usually deviate from the optimal path suggested by ex-post rational response model’s analysis. Hence, the main problem of the rational response model for providing the normative ex ante guidance is the essential inability of humans to predict the dynamics of the industry disruption (Benner & Tripsas, 2012; Demil & Lecocq, 2010; Yu & Hang, 2010). Whereas some of the crucial contingencies (particularly organizational enablers: learning capabilities, slack resources, specialized complementary assets) can be estimated ex ante with enough accuracy, others (market drivers: market propensity and innovation legitimacy) cannot be forecasted with the precision enough for strategic decision making. Moreover, some market contingencies are dependent upon the firm’s actions (such as the subjective legitimacy of an innovation going substantively up after its endorsement by a dominant incumbent), which adds complexity and dynamics to the disruption process. Consequently, to be able to infer normative ex-ante recommendations based on the rational response model, it must be supplemented with an uncertainty resolution mechanism, such as a real options perspective (Hill & Rothaermel, 2003; McGrath, 2010; Raynor, 2007). According to real options logic, investments in the development of the disruptive business model are treated as paying the premium for a real option on this approach. This allows managers of the incumbents to possess a call option on the disruptive approach—the ability to execute the option by embracing the disruptive business model and scaling it up if in the future the market drivers for the disruption turn out to be substantive (Hill & Rothaermel, 2003; McGrath, 2010), or the resolution of uncertainty turns out to be in favor of the disruption (Raynor, 2007). Moreover, additional information regarding the disruption is often collected as a by-product of experimentation and implementation of the disruptive approach; this additional information improves the incumbent managers’ ability to forecast the market drivers and organizational enablers (of the rational response
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model), and to build the absorptive capacity with regards to the disruptive approach (Hill & Rothaermel, 2003). Therefore, on the early stage of the evolution of the disrupted industry (when significant uncertainty still makes impossible the accurate estimation of the market potential of the disruptive approach), the incumbents should invest in both explorative and exploitative business model changes, treating these investments as payment for real options on uncertainty of the future, which limit the downside risk of the change (McGrath, 2010) and prevent the lock-out (Hill & Rothaermel, 2003). On these stages, the contingency factors of the rational response model (market drivers, organizational enablers, synergy) are not known yet; rather, they have to be treated as dimensions to build scenarios of the possible futures (Raynor, 2007). Within each scenario, the contingency factors are assumed to be certain, and the rational response model will yield the optimal response strategy, contingent upon the scenario being materialized. Since in the future, only one scenario will become a reality, and there is no way to find out ex-ante which one, a portfolio of real options must support this optimal strategy for each scenario. The latter will make sure that no matter which scenario of the future materializes, the incumbent is not locked out from the winning business model approach at a later stage of the disruption when all significant uncertainties are resolved. In most cases, the real options approach implies simultaneous investment of small amounts into both explorative and exploitative business model changes; these investments with limited downside potential allow gathering the information about both approaches as the disruption gains momentum, as well as building the portfolio of real options to make sure that regardless of the actual future, the company has the ability to acquire the necessary capabilities to embrace and scale up the winning approach. Proper Cognitive Framing of the Disruptive Innovation In the prior section, we discuss how embracing the real options lens for analyzing the investments into exploring the disruptive innovation can remediate the uncertainty of structural factors driving the rational response. In business practice, this rational reasoning should be supplemented by proper cognitive framing of the disruptive innovation, to remove the cognitive barriers of the rational response. We suggest that from the very beginning, the disruptive innovation must be framed in terms of both threat (to existing business model) and opportunity (to profit from the disruptive change). Such dual framing of the disruption in the minds of organizational decision making will lead to cognitive resilience (Dewald & Bowen, 2010; Osiyevskyy & Dewald, 2018), a necessary precondition for experimenting
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with or embracing the disruptive innovation. As such, the dual threat-opportunity framing of the innovation must supplement the discussed above real options mechanisms when responding to the gaining momentum disruptive innovations. Internalization or Autonomy As discussed in this chapter, integration response implies the simultaneous development of two business models, existing and disruptive ones, aiming at leveraging the synergies between them. Moreover, even in the cases of Pure Exploration response (explorative adoption of the disruptive business model only), both business models have to co-exist, at least for some time, before the existing model is abandoned. This raises the question of the proper way of combining and managing the two models in the same organization. Existing extensive literature on the topic of combining multiple business models in one organization stresses two basic approaches for this: internalization of both models in one organization, or creating an autonomous business unit (spin-off) for developing the disruptive business model independently from the existing business model (Christensen & Raynor, 2013; Hill & Rothaermel, 2003; Markides, 2006; Markides & Charitou, 2004; O’Reilly & Tushman, 2008), with most recommendations inclined towards the latter approach (Crockett et al., 2013; Markides & Charitou, 2004). The internalization approach implies tight coupling of both business models within the same organizational context (organizational structure, incentives system, a system of market information collection, organizational culture), which facilitates maximal exploitation of the synergies between business models. Indeed, keeping both models tightly coupled, as opposed to keeping them independent, facilitates more free flow of information between managers responsible for their development, as well as ensuring the necessary support of the nascent disruptive offering. With benefits, the internalization approach brings potential costs, caused by inherent conflicts between the existing and disruptive business models. These conflicts are caused by different value propositions of the two models, which result in significant incongruities in their supporting transactive and resource structures (e.g., different approaches to serving the customer bases, different cost structures, and different emphasis on activities in value chains). Some authors even argue that these conflicts are so severe and frequent, that “the simultaneous pursuit of different business models within the same organizational unit will lead to a failure to execute one or perhaps both models” (Hill & Rothaermel, 2003, p. 267). Loose coupling of the existing and disruptive business models through establishing an autonomous business unit for the disruptive approach
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eliminates the conflicts (Christensen & Raynor, 2013; Hill & Rothaermel, 2003; Markides & Charitou, 2004), but also reduces the benefits from the economies of scale and scope which result from coordinated activities between the two business models. Therefore, the optimal choice of a governance mechanism for managing two business models is contingent upon the benefits of coordinated activities, achieved within the internalization approach, and costs associated with them. As the prior literature suggests, the costs of keeping both business models in the same organizational context usually substantively exceed the benefits from synergy; hence, the most frequent solution to the innovator’s dilemma is establishing a spin-off unit for pursuing disruptive opportunities (Christensen & Raynor, 2013; Hill & Rothaermel, 2003; Markides & Charitou, 2004). DISCUSSION Key Insights: Summary We began the chapter by posing the question of how incumbent firms should respond to emerging disruptive BMIs introduced in their industries, and why the observable actions are usually deviant from the rational path. To provide a comprehensive answer to these broad research questions, we draw heavily on the literature streams on business models and disruptive innovations. We propose a rational response model, anchored in the Osiyevskyy and Dewald’s (2015a) typology of incumbent responses (explorative adoption of the disruptive business model versus exploitative development of the existing one), supplemented by a set of testable propositions regarding contingency factors determining optimal incumbent actions when facing a disruptive BMI. We demonstrate the essential groups of contingency factors (market drivers and organizational enablers of the disruptive innovation, synergy, complementarity of the business models), which determine the expected performance outcomes of explorative and exploitative business model changes. In addition, we develop a behavioral model of incumbent firms’ responses to disruptive BMIs gaining momentum in their industries, describing and explaining the typical pattern in incumbent firm response (Defiant Resistance → Pure Exploitation → Integration), contingent upon the stage of the disruptive innovation’s development. Finally, we supplement the insights of rational and behavioral models with normative recommendations for managers of real-world established firms having to make decisions regarding nascent or gaining momentum disruptive BMIs in their industries.
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Implications for Theory and Future Research We see a set of theoretical contributions of the chapter for the nascent literature on business models (Foss & Saebi, 2018; Zott et al., 2011), as well as for the more established literature on disruptive innovations. To the former stream of literature, we add new insights regarding business model change and innovations; while for the latter stream our contribution stems from emphasizing the peculiar features of disruptive BMIs, as opposed to traditional disruptive technologies. First, we clarify the conceptualization of the essential terms, most notably, BMI and business model change, providing a clear theoretical distinction between the two. This clarification of the key terms is necessary for further development of the BMI field. Second, we study the complexity of the phenomenon of business model change in response to emerging disruptive innovation, showing two distinct dimensions of this process: explorative and exploitative change. Being developed deductively from existing theories (rather than inductively from the data), the proposed typology of responses is both parsimonious and allinclusive. None of the two generic approaches is ultimately superior in all situations; rather, it is a set of contextual factors that determine the optimal response (or their combination). Third, the developed rational response model provides a set of testable propositions (P1–P5) regarding the contextual factors determining the performance outcomes of different types of incumbent responses, uniting prior disparate studies suggesting appropriate responses into a holistic contingency-based model. Fourth, in the developed behavioral response model, we elaborate on the question of the dynamics of the pattern of incumbent responses to disruptive BMIs introduced in their industries. First time in the literature, the model stresses the temporal aspect of a disruptive BMI process, explaining the reasons for observable behavior in different stages of the disruption. The obtained theoretical insights open a set of future research streams. The current study stresses the importance of understanding disruptive innovations in today’s business environment and the infancy of the literature on the topic, which open the rich opportunity available to researchers. The employed typology of business model changes can be employed in further studies of business models and disruptive innovations within the descriptive and prescriptive theoretical perspectives, as a parsimonious, holistic conceptualization of the variation of business model change phenomenon. The developed contingency-based rational responses model opens a fruitful research agenda with the potential for conceptual and empirical studies of the determinants of optimal incumbent actions when facing a disruptive BMI. Particularly promising would be conceptualizing and empirical
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investigating the impact of crucial contextual factors, market drivers, or organizational enablers. The richest further research agenda opens in relation to the warranted fine-grain analysis of organizational enablers of embracing the disruptive approach, which was only briefly outlined in the current chapter. Potential studies could discriminate between the impact of different types of slack (e.g., absorbed, unabsorbed, potential), or diverse types of organizational learning capabilities (e.g., learning orientation and absorptive capacity). The other important understudied question is related to the drivers of the contingency factors, most important, what are the determinants of the market drivers (market propensity and innovation legitimacy), and how the actions of established incumbents influence these drivers? How do different aspects of innovation legitimacy (subjective, regulatory) evolve over time? How do incumbents’ actions influence innovation legitimacy and market propensity? Answering these questions would make the dynamics of the disruption process more predictable. Finally, the behavioral view of response also requires further clarification, using the multi-dimensional analysis of strategic decisions and stressing the role of cognition and decision-making in expanding the behavioral stream of strategy research. Particularly interesting is studying the few incumbents who respond to the disruption by Pure Exploration response, or by switching to the new business model without the development of the established one. We argued that such responses are very rare among established players, because of the cognitive barriers and structural inertia preventing radical business model change. Despite being rare, such companies still exist. What drives such responses, and what are their performance outcomes? Implications for Practice For managers of incumbent firms, the chapter provides guidance for making appropriate decisions when faced with emerging disruptive BMIs in their industries. The discussed rational response model provides specific advice regarding choosing the optimal response (with highest expected performance outcome), provided full information is available (namely, the future values of contingency factors). The proposed later real options and cognitive resilience lenses provide normative guidance when the assumption of full available information is relaxed. Notably, the dual framing of the disruptive innovation—as both an opportunity and a threat—allows removing the cognitive barriers of the appropriate response. The other crucial for practice insight of this chapter is the emphasis on internal contingency factors (organizational enablers) when adopting a disruptive business model. We provide a comprehensive (although probably
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not exhaustive) list of crucial internal success factors for disruptive innovating of the firm, all being within the managerial control: slack resources, specialized complementary assets, and organizational learning capabilities. Strengthening these (most important, having the buffer of slack resources and enhancing organizational learning capabilities) opens up opportunities for real-world companies to increase the likelihood of success of the radical business model change projects. REFERENCES Ansari, S. S., & Krop, P. (2012). Incumbent performance in the face of a radical innovation: Towards a framework for incumbent challenger dynamics. Research Policy, 41(8), 1357–1374. Baker, W. E., & Sinkula, J. M. (1999). The synergistic effect of market orientation and learning orientation on organizational performance. Journal of the Academy of Marketing Science, 27(4), 411–427. Barney, J. (1991). Firm resources and sustained competitive advantage. Journal of Management, 17(1), 99–120. Benner, M. J., & Tripsas, M. (2012). The influence of prior industry affiliation on framing in nascent industries: The evolution of digital cameras. Strategic Management Journal, 33(3), 277–302. Bergek, A., Berggren, C., Magnusson, T., & Hobday, M. (2013). Technological discontinuities and the challenge for incumbent firms: Destruction, disruption or creative accumulation? Research Policy, 42(6–7), 1210–1224. Biloshapka, V., & Osiyevskyy, O. (2018). Value creation mechanisms of business models. The International Journal of Entrepreneurship and Innovation, 19(3), 166–176. Casadesus-Masanell, R., & Ricart, J. E. (2010). From strategy to business models and onto tactics. Long Range Planning, 43(2), 195–215. Casadesus-Masanell, R., & Zhu, F. (2013). Business model innovation and competitive imitation: The case of sponsor-based business models. Strategic Management Journal, 34(4), 464–482. Charitou, C. D., & Markides, C. (2003). Responses to disruptive strategic innovation. MIT Sloan Management Review, 44(2), 55–63. Christensen, C. (1997). The innovator’s dilemma: When new technologies cause great firms to fail. Boston, MA: Harvard Business Review Press. Christensen, C. (2006). The ongoing process of building a theory of disruption. Journal of Product Innovation Management, 23(1), 39–55. Christensen, C., & Bower, J. L. (1996). Customer power, strategic investment, and the failure of leading firms. Strategic Management Journal, 17(3), 197–218. Christensen, C., Johnson, C. W., & Horn, M. B. (2010). Disrupting class. New York, NY: McGraw-Hill. Christensen, C., & Raynor, M. (2013). The innovator’s solution: Creating and sustaining successful growth. Boston, MA: Harvard Business Review Press. Christensen, C., Raynor, M. E., & McDonald, R. (2015). What is disruptive innovation. Harvard Business Review, 93(12), 44–53.
Dynamic Responses to Disruptive Business Model Innovations 143 Cohen, W. M., & Levinthal, D. A. (1990). Absorptive capacity: A new perspective on learning and innovation. Administrative Science Quarterly, 35(1), 128–152. Crockett, D. R., McGee, J. E., & Payne, G. T. (2013). Employing new business divisions to exploit disruptive innovations: The interplay between characteristics of the corporation and those of the venture management team. Journal of Product Innovation Management, 30(5), 856–879. Cyert, R. M., & March, J. G. (1963). A behavioral theory of the firm. Englewood Cliffs, NJ: Prentice-Hall. DaSilva, C. M., & Trkman, P. (2014). Business model: What it is and what it is not. Long Range Planning, 47(6), 379–389. Demil, B., & Lecocq, X. (2010). Business model evolution: In search of dynamic consistency. Long Range Planning, 43(2–3), 227–246. Dewald, J., & Bowen, F. (2010). Storm clouds and silver linings: Responding to disruptive innovations through cognitive resilience. Entrepreneurship Theory and Practice, 34(1), 197–218. Downes, L., & Nunes, P. F. (2013). Big bang disruption. Harvard Business Review, 91(3), 44–56. Foss, N. J., & Saebi, T. (2018). Business models and business model innovation: Between wicked and paradigmatic problems. Long Range Planning, 51(1), 9–21. George, G., & Bock, A. J. (2011). The business model in practice and its implications for entrepreneurship research. Entrepreneurship Theory and Practice, 35(1), 83–111. Giesen, E., Berman, S. J., Bell, R., & Blitz, A. (2007). Three ways to successfully innovate your business model. Strategy & Leadership, 35(6), 27–33. Gilbert, C. (2003). The disruption opportunity. MIT Sloan Management Review, 44(4), 27–33. Habtay, S. R. (2012). A firm-level analysis on the relative difference between technology-driven and market-driven disruptive business model innovations. Creativity and Innovation Management, 21(3), 290–303. Hill, C. W. L., & Rothaermel, F. T. (2003). The performance of incumbent firms in the face of radical technological innovation. Academy of Management Review, 28(2), 257–274. Hitt, M. A., Ireland, R. D., & Hoskisson, R. E. (2016). Strategic management: Concepts and cases: Competitiveness and globalization. Boston, MA: Cengage Learning. Kaplan, S., & Tripsas, M. (2008). Thinking about technology: Applying a cognitive lens to technical change. Research Policy, 37(5), 790–805. Karimi, J., & Walter, Z. (2016). Corporate entrepreneurship, disruptive business model innovation adoption, and its performance: The case of the newspaper industry. Long Range Planning, 49(3), 342–360. Kim, S. K., & Min, S. (2015). Business model innovation performance: When does adding a new business model benefit an incumbent? Strategic Entrepreneurship Journal, 9(1), 34–57. Leber, J. (2013, March 8). A shrinking Garmin navigates the smartphone storm. MIT Technology Review. Retrieved from https://www.technologyreview.com/ s/511786/a-shrinking-garmin-navigates-the-smartphone-storm/ March, J. G. (1991). Exploration and exploitation in organizational learning. Organization Science, 2(1), 71–87.
144 O. OSIYEVSKYY, A. B. RADNEJAD, and K. K. SINHA Markides, C. (2006). Disruptive innovation: In need of better theory. Journal of Product Innovation Management, 23(1), 19–25. Markides, C. (2013). Business model innovation: What can the ambidexterity literature teach us? Academy of Management Perspectives, 27(4), 313–323. Markides, C., & Charitou, C. D. (2004). Competing with dual business models: A contingency approach. Academy of Management Perspectives, 18(3), 22–36. Markides, C., & Oyon, D. (2010). What to do against disruptive business models (when and how to play two games at once). MIT Sloan Management Review, 51(4), 25–32. McGrath, R. G. (2010). Business models: A discovery driven approach. Long Range Planning, 43(2), 247–261. Miles, R. E., Snow, C. C., Meyer, A. D., & Coleman, H. J. (1978). Organizational strategy, structure, and process. Academy of Management Review, 3(3), 546–562. Mone, M. A., McKinley, W., & Barker, V. L., III (1998). Organizational decline and innovation: A contingency framework. Academy of Management Review, 23(1), 115–132. Nelson, R. R., & Winter, S. G. (2009). An evolutionary theory of economic change. Cambridge, MA: Harvard University Press. O’Reilly, C. A., III, & Tushman, M. L. T. (2008). Ambidexterity as a dynamic capability: Resolving the innovator’s dilemma. Research in Organizational Behavior, 28, 185–206. Osiyevskyy, O., & Dewald, J. (2015a). Explorative versus exploitative business model change: The cognitive antecedents of firm-level responses to disruptive innovation. Strategic Entrepreneurship Journal, 9(1), 58–78. Osiyevskyy, O., & Dewald, J. (2015b). Inducements, impediments, and immediacy: Exploring the cognitive drivers of small business managers’ intentions to adopt business model change. Journal of Small Business Management, 53(4), 1011–1032. Osiyevskyy, O., & Dewald, J. (2018). The pressure cooker: When crisis stimulates explorative business model change intentions. Long Range Planning, 51(4), 540–560. Osiyevskyy, O., & Zargarzadeh, A. (2015). Business model design and innovation in the process of the expansion and growth of global enterprises. In A. A. Camillo (Ed.), Global enterprise management (pp. 115–133). New York, NY: Palgrave Macmillan. Porter, M. E. (1980). Industry structure and competitive strategy: Keys to profitability. Financial Analysts Journal, 36(4), 30–41. Raynor, M. E. (2007). The strategy paradox: Why committing to success leads to failure (and what to do about it). New York, NY: Doubleday. Rosenkopf, L., & Nerkar, A. (2001). Beyond local search: Boundary-spanning, exploration, and impact in the optical disk industry. Strategic Management Journal, 22(4), 287–306. Sabatier, V., Craig-Kennard, A., & Mangematin, V. (2012). When technological discontinuities and disruptive business models challenge dominant industry logics: Insights from the drugs industry. Technological Forecasting and Social Change, 79(5), 949–962.
Dynamic Responses to Disruptive Business Model Innovations 145 Sandström, C., Magnusson, M., & Jörnmark, J. (2009). Exploring factors influencing incumbents’ response to disruptive innovation. Creativity and Innovation Management, 18(1), 8–15. Schumpeter, J. A. (1934). The theory of economic development: An inquiry into profits, capital, credit, interest, and the business cycle. New Brunswick, NJ: Transaction. Singh, J. V. (1986). Performance, slack, and risk taking in organizational decision making. Academy of Management Journal, 29(3), 562–585. Sinkula, J. M., Baker, W. E., & Noordewier, T. (1997). A framework for market-based organizational learning: Linking values, knowledge, and behavior. Journal of the Academy of Marketing Science, 25(4), 305–318. Sosna, M., Trevinyo-Rodríguez, R., & Velamuri, S. (2010). Business model innovation through trial-and-error learning: The Naturhouse case. Long Range Planning, 43(2), 383–407. Stuart, T. E., & Podolny, J. M. (1996). Local search and the evolution of technological capabilities. Strategic Management Journal, 17(S1), 21–38. Sultan, N., & van de Bunt-Kokhuis, S. (2012). Organisational culture and cloud computing: Coping with a disruptive innovation. Technology Analysis & Strategic Management, 24(2), 167–179. Teece, D. J. (1986). Profiting from technological innovation: Implications for integration, collaboration, licensing and public policy. Research Policy, 15(6), 285–305. Teece, D. J. (2010). Business models, business strategy and innovation. Long Range Planning, 43(2–3), 172–194. The Last Kodak Moment. (2012, January 14). Economist. https://www.economist. com/business/2012/01/14/the-last-kodak-moment Tost, L. P. (2011). An integrative model of legitimacy judgments. Academy of Management Review, 36(4), 686–710. Tripsas, M. (1997). Unraveling the process of creative destruction: Complementary assets and incumbent survival in the typesetter industry. Strategic Management Journal, 18(S1), 119–142. Tripsas, M., & Gavetti, G. (2000). Capabilities, cognition, and inertia: Evidence from digital imaging. Strategic Management Journal, 21(10–11), 1147–1161. Wan, F., Williamson, P. J., & Yin, E. (2015). Antecedents and implications of disruptive innovation: Evidence from China. Technovation, 39–40, 94–104. Yu, D., & Hang, C. C. (2010). A reflective review of disruptive innovation theory. International Journal of Management Reviews, 12(4), 435–452. Zahra, S. A., & George, G. (2002). Absorptive capacity: A review, reconceptualization, and extension. Academy of Management Review, 27(2), 185–203. Zott, C., Amit, R., & Massa, L. (2011). The business model: Recent developments and future research. Journal of Management, 37(4), 1019–1042.
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CHAPTER 6
BEHAVIORAL STRATEGY AND INTERNATIONAL ATTENTION Theory and Evidence From Dutch Smalland Medium-Sized Enterprises Jiasi Fan Gjalt de Jong Hans van Ees
ABSTRACT It has often been observed that real-world managers make strategic decisions that are not in line with the standard assumptions of individual rationality. In part, this empirical anomaly is due to the unrealistic assumptions concerning human behavior in economic models. Our study aims to offer new foundations for the strategic decision making behavior of managers of small and medium-sized enterprises (SMEs). This chapter investigates how export-related factors shape the international attention of SME managers. Based on unique survey data from Dutch SME exporters, our research reveals three important insights. First, there are goal-directed processes in which the international attention of SME managers is determined by a firm’s export experience and export diversity. Second, there are stimulus-driven processes in which the in-
Entrepreneurship and Behavioral Strategy, pages 147–177 Copyright © 2020 by Information Age Publishing All rights of reproduction in any form reserved.
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148 J. FAN, G. de JONG, and H. van EES ternational attention of SME managers is determined by export market turbulence. Third, the relationship between export market turbulence and the international attention of SME managers hinges on the presence or absence of an export department within a SME. In so doing, we open the black box of international attention of SME managers and contribute to a growing field of behavioral strategy and entrepreneurship research that aims to strengthen the empirical relevance and practical usefulness of strategy and entrepreneurship research.
INTRODUCTION Internationalization is a key strategic decision of managers. Despite all efforts, however, an in-depth understanding of variations in internationalization is still lacking to date. We argue that behavioral perspectives are helpful in the understanding of internationalization strategy. Economic theory assumes that economic agents such as managers are rational and that they all behave in the same way. Empirical evidence concerning internationalization and experimental economics show that these assumptions are not in line with real-world strategic decisions—such as internationalization—for firms in general and for small and medium-sized enterprises (SMEs) in particular. We therefore align with behavioral strategy that suggests applying cognitive and social perspectives to management challenges in order to overcome the empirical contradictions (see, e.g., Das [2014] for some perspectives in the recent literature). In line with behavioral strategy scholars, we aim to bring realistic assumptions about the internationalization strategy of SMEs. We study the underlying behavioral mechanisms and determinants of variations in international attention of SME managers. In so doing, this chapter contributes to this relatively new but fast growing research tradition of behavioral strategy and entrepreneurship. Research on behavioral mechanism underlying firm strategy has attracted considerable interests (Greve, 2008; Joseph & Wilson, 2017). Although the behavioral strategy theory of the firm presumes that firm growth varies with the focus and limits of managerial attention, the actual role played by managerial attention has remained largely implicit. The attention-based view (ABV) is a useful lens through which to investigate this issue. International attention is a key concept in ABV and is defined as “the extent to which top executives invest time and effort in activities, communications, and discussions in order to improve their understanding of the global marketplace” (Bouquet, Morrison, & Birkinshaw, 2009, p. 108). Bouquet and Birkinshaw (2011) discuss how international attention matters for the global strategy and success of large multinationals. International attention is different from a related construct—global mindset. The latter represents “a highly complex cognitive structure . . . and the cognitive ability . . .” (Levy,
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Beechler, Taylor, & Boyacigiller, 2007, p. 244). Simply put, a global mindset is about cognitive structures of managers, while international attention is concerned with their practices. Despite the insights provided by this pioneer work, it tends to consider managerial attention as a prerequisite for a firm’s internationalization and performance (Bouquet et al., 2009), ignoring the fact that managerial attention may evolve with a firm’s international efforts. The ABV has explained that managerial attention can be determined by immediate contexts and prevailing structures (Ocasio, 1997). Venturing internationally entails environmental (i.e., contextual) changes that enhance or inhibit a firm’s competitive advantage, demand organizational (i.e., structural) adaptations in response to various international opportunities and threats, and thus may affect managerial attention. This chapter explicitly considers the underlying processes that determine international attention. Specifically, we distinguish between goal-directed processes (in which attention is driven by internal goals and incentives; Kanfer & Ackerman, 1989) and stimulus-driven processes (in which attention is driven by external stimuli; Hansen & Haas, 2001). We offer four contributions to the literature. First, we investigate the effects of firm-level export experience and export diversity on international attention as goaldirected processes. Export experience generates a strong belief about the relevance of current operations on the anticipated goal (i.e., internationalization) and therefore may reduce the incentives that encourage managers to pay attention to new international opportunities and information. Export diversity, on the other hand, is likely to increase a manager’s international attention in the sense that spreading activities across a large number of export markets not only reinforces the primacy of foreign sales and markets in a firm’s business goals but also requires more effort to coordinate. Second, we examine two specific stimulus-driven processes as attention drivers: export competitive intensity and export market turbulence. Both characterize important and relevant aspects of the export environment and address the point emphasized by Ocasio (1997) that managers pay attention only to salient, important, and relevant aspects. By doing so, we respond to a call for considering goal-directed and stimulus-driven processes simultaneously when studying managerial attention (Ocasio, 2011). Third, our theoretical arguments are developed in the context of SMEs. While large global companies may provide an appropriate domain for exploring the subject of international attention, it can be argued that developing international attention is particularly imperative for SMEs. SMEs now operate in a world where a firm’s core competitive advantage depends on its ability to develop internationally (Lu & Beamish, 2001). International expansion offers SMEs numerous benefits, for example, getting access to a larger customer base, achieving economies of scale, spreading business
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risks, and so forth (Knight, 2000). Yet SMEs are underrepresented in the international marketplace (OECD, 2008). Among the various barriers encountered, a lack of knowledge about international opportunities and foreign markets acts as a major impediment to SMEs’ internationalization (for a review, see Arteaga-Ortiz & Fernández-Ortiz, 2010). Such challenges require a high level of international attention on the part of SME managers. However, there has been little consideration in the literature about how an SME manager’s international attention is shaped in these processes. Fourth, we also examine whether and how the presence of an export department moderates the stimulus-driven processes of international attention. Prior studies on the role of organizational units in shaping managerial attention often assume that different units could hold distinct and sometimes conflicting perspectives, and thus have to compete for managerial attention (Bouquet & Birkinshaw, 2008). This is particularly relevant for large corporations comprising multiple organizational levels and subunits. However, it is also possible that departmentalization in SMEs increases functional specialization in a SME organization and eases a manager’s workload. In this respect, SMEs offer a relevant research context as these firms normally have simple structures, with an individual at the top contributing all the attention until some delegation of responsibilities emerges in the firm. An export department can take over certain responsibilities from a manager, including keeping track of changes in the international marketplace. We therefore theorize and test how the effects of environmental stimuli on the international attention of SME managers vary according to the presence/ absence of an export department. The outline of this chapter is as follows. Section two presents the theoretical foundations and hypotheses of our research. Section three presents the data collection and measurement of constructs. The empirical results are in section four. Section five concludes the chapters and offers avenues for future research. THEORY AND HYPOTHESES The behavioral theory of the firm was developed by Cyert and March (1963) and has since then inspired a great deal of work on behavioral organization studies and behavioral strategy. In its original formulation, the firm is understood as a problem-solving entity with limited attentional capacity (see Ocasio, 2011). Multiple and perhaps conflict goals among organizational units and members of the firm’s political coalition compete for managerial attention (March, 1962). Managerial attention can also be shaped by organizational experience with existing decisions, which determine certain patterns of attention and automatic responses accordingly
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(Ocasio, 2011). When failing to meet aspiration levels, problematic search and organizational learning will be triggered in response to performance shortfalls (Greve, 2008). We suggest that managerial attention is driven by organizational goals. A stimulus-driven attentional process is usually lacking in the behavioral studies of strategy (Ocasio, 2011). However, in an ABV of the firm, the environment provides stimuli for managers to attend to and to make decisions upon (Ocasio, 1997). Attentional processes can be goal-directed (e.g., goals and schemas) and stimulus-driven (e.g., situational and environmental factors; Ocasio, 2011). As such, the ABV can be considered as a specific extension of the behavioral strategy of entrepreneurship, with its emphasis on the interplay among structures, environmental influences, individual, and organization attention. Building upon the ABV, we therefore develop a set of hypotheses that include goal-directed and stimulus-driven processes of international attention. While most behavioral studies of strategy have treated attentional processes implicitly, we bring managerial attention and its foundational processes to the forefront. Goal-Directed Processes of International Attention Research into goal-directed processes links attention to incentives (Kanfer & Ackerman, 1989; Ocasio, 2011). In goal-directed processes managerial attention can be driven by knowledge (Swan, 1997), resources and capabilities (Barreto & Patient, 2013), and more straightforwardly, goals (Cyert & March, 1963) or interests (Dutton, Fahey, & Narayanan, 1983). In this chapter, we focus on two firm-level goal-related factors: experience (manifesting knowledge, resources, and capabilities) and strategy (manifesting goals and interests). Experience represents accumulated knowledge and capabilities, which constitute an important base for a firm’s competitive advantage. However, experience as such often leads to a strong belief about the relevance of existing knowledge and capabilities for achieving an expected goal, simultaneously reducing incentives for new paradigms or information (Levinthal & March, 1993). As March and Simon (1958) argue, managers often rely on a learned pattern of responses which is structurally reinforced instead of employing new search efforts. Here we draw on learning theory to support our argument (on the relationship between export experience and managers’ international attention) as experience reflects a firm’s past learning. International attention differs from the concept of learning. For example, learning involves inferences from information (Levinthal & March, 1993), but attention does not. Given this myopia (Levinthal & March, 1993) and inertia (i.e., routine rigidity; Gilbert, 2005), we argue that a firm’s export experience may discourage a manager’s international attention. A firm’s
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dominant strategy embodies its expectations, interests, and current goals, and will therefore encourage a manager to focus attention in a specific direction (De Clercq, Sapienza, & Zhou, 2014; Ocasio, 2011). We argue that a diversified international market strategy (i.e., export diversity) not only reinforces the importance of foreign sales and markets but also increases the complexity of and demand for coordination efforts, thereby enhancing a manager’s international attention. Export Experience and International Attention Export experience demonstrates a firm’s knowledge with respect to doing business in foreign markets (Kaleka, 2002). Such experience can be an important source in guiding a firm’s actions to achieve certain goals in international markets. SMEs with export experience are likely to understand foreign markets better and perceive less uncertainty in their export activities (Tesfom & Lutz, 2006). In addition to knowledge about specific foreign markets, experience also brings about firm-wide routines and procedures resulting from repeated engagement. The latter constitutes an organization’s knowledge about how to organize international operations, which has important implications for its future behavior (Eriksson, Johanson, Majkgard, & Sharma, 1997). Routines are also expected to improve task performance by increasing reliability and speed (Bingham & Eisenhardt, 2011). As a firm develops relevant routines, the incentives for its manager to search for a broader range of action alternatives may weaken however. Considering it a contradiction in the entrepreneur’s information processing, Zahra, Korri, and Yu (2005) suggest that extensive international experience might prevent managers from identifying new international opportunities, as the experience encourages a rigid focus on familiar areas at the cost of ignoring new information. Similarly, Kaleka (2002) argues that firms could become inflexible as their experiential knowledge increases, maintaining a presence in current markets without further exploration. To that end, we argue that experienced SME managers are less likely to seek new information about international markets constantly. This echoes the view that experience-based attention tends to be narrow, centering on current activities (Gavetti & Levinthal, 2000). On the contrary, less experienced exporters lack sufficient knowledge about export operations. As Fernhaber and Li (2013) note, a manager’s focus of attention varies with information demand at different stages of a venture. New ventures typically pay attention to a broad range of information from their external environments to ensure survival and success. Older ventures, on the other hand, focus attention on specific information that helps gain competitive advantage. In a similar vein, we argue that
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less experienced exporters require more general knowledge about international markets compared to experienced exporters, in order to be able to address the liabilities of newness and foreignness. Managers of less-experienced exporters have stronger incentives to gather information about local environments, develop a network of overseas contacts and carefully plan export-marketing programs. Therefore, we propose the following: Hypothesis 1: Export experience will be negatively associated with the international attention of SME managers. Export Diversity and International Attention Export diversity, often measured by the number of country-markets served, has been used to indicate the degree of market expansion of a firm’s export strategy (Dhanaraj & Beamish, 2003; Lee & Yang, 1990). Export diversity reflects a firm’s intention to pursue export sales, representing a mode of operation deployed to fulfill the firm’s goals in international markets. As such, export diversity reflects a goal-directed process of international attention. As Ocasio (1997) notes, corporate strategy can be understood as a pattern of organizational attention—the distinct focus of a firm’s (and its manager’s) time and effort on a particular set of issues and factors that are central to the purpose of the firm. The empirical work of De Clercq et al. (2014), for example, shows that an entrepreneurial strategic posture is positively related to a firm’s learning efforts in foreign markets. As a firm expands into a larger number of different country-markets, foreign sales and markets become increasingly important to the business goal, thereby motivating the manager to pay more attention to the international marketplace. It could be argued that a firm’s entry into multiple countries might not arise entirely from internal motives but can be triggered by external stimuli (e.g., exchange rates, tax incentives). It is beyond the scope of this study to discuss how such diversity emerges. However, in either case, we argue that the increased task demand associated with diversity is likely to promote a manager’s international attention. Specifically, a high level of diversity increases the complexity of a firm’s export activities and the ensuing coordination efforts. From an information-processing perspective (Thomas & McDaniel, 1990), managers have to attend to many variables when a firm’s strategy involves high levels of diversity and complexity. SMEs that export to large numbers of foreign countries are confronted with various crossnational differences associated with for instance legal frameworks, culture, and customer behavior (Cieślik, Kaciak, & Welsh, 2012). Managing these cross-national differences consumes a manager’s time and effort. Therefore, the larger the number of foreign countries a SME serves the more
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international attention the manager will exhibit. In cases where export diversity is treated as a component of experience (i.e., the geographic scope of export experience; Erramilli, 1991), our theory suggests that the length of export experience and the geographic scope of export experience differ in their effects on a manager’s international attention. Taken together, we hypothesize the following: Hypothesis 2: Export diversity will be positively associated with the international attention of SME managers. Stimulus-Driven Processes of International Attention Research into stimulus-driven processes centers on how the characteristics of relevant stimuli determine a manager’s attention (Hansen & Haas, 2001). A firm’s environment provides constant flows of stimuli competing for the manager’s attention (Ocasio, 1997). Among the various stimuli, managers tend to allocate attention to those with greater salience, importance, and relevance (Ocasio, 1997). Therefore, environments featured by strong cues in the form of high levels of uncertainty (i.e., manifesting salience; Daft, Sormunen, & Parks, 1988; Garg, Walters, & Priem, 2003) will gain the attention of managers. Compared with the general environment (e.g., political, economic, and technological), the specific environment of the firm (e.g., competitors and customers) is characterized by higher rates of change, greater complexity and can affect firm performance on a daily basis manifesting importance and relevance (Daft et al., 1988). This is also true for exporters, as Kaleka and Berthon (2006) have observed, noting that competitive intensity and market turbulence are of particular importance to a firm’s acquisition of export market information. We therefore focus on two key players in the export environment of the firm: competitors and customers. We argue that uncertainties pertaining to these two players, termed export competitive intensity and export market turbulence, will draw the international attention of managers. Export Competitive Intensity and International Attention Competitive intensity concerns the extent of rivalry behaviors among competitors (Jaworski & Kohli, 1993). A hypercompetitive environment features frequent and unpredictable changes in competitors’ actions, preventing managers from developing a clear and comprehensive understanding of a situation (Nadkarni & Barr, 2008). While such challenges can make it difficult for managers to identify future competitors (Yu, Wang,
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& Brouthers, 2015), certain efforts are needed to maintain a firm’s competitive position, for example, to focus on current competitors and track relevant information. In contrast, managers are rarely challenged in an environment characterized by weak competition, and are less prone to refine their knowledge about competitors and the competition. The stability and predictability of a weak competitive environment allow managers to use established knowledge to manage a firm’s activities in international markets. As such, we anticipate the following: Hypothesis 3: Export competitive intensity will be positively associated with the international attention of SME managers. Export Market Turbulence and International Attention Market turbulence refers to the stability in the composition of a firm’s customers and their preferences (Jaworski & Kohli, 1993). In turbulent markets, customers’ needs and preferences change constantly. Firms feel the pressure of ambiguity and uncertainty regarding customer behaviors (Sinkula, 1994). Some researchers therefore conclude that strategic planning in this case may no longer be productive as the market is changing at the same time the planning occurs (Sarasvathy, 2009). However, we argue that market turbulence requires actions, for example, to modify products/services and marketing strategies to meet emerging customer needs (Kaleka & Berthon, 2006). Managerial attention can be focused when participating in such actions (Ocasio, 1997). This is also in line with the research on export market orientation, which is different from international attention. The latter represents market-oriented behaviors at the firm level, see Cadogan, Diamantopoulos, & Siguaw, 2002), insofar as that firms operating in turbulent markets experience a greater need to be market-oriented to keep track of emerging changes in markets and to update their understanding and interpretation of markets (Cadogan et al., 2002). Thus, we expect the following: Hypothesis 4: Export market turbulence will be positively associated with the international attention of SME managers. The Moderating Effect of an Export Department Researchers have studied the relationship between units in organizations and managerial attention (Bouquet & Birkinshaw, 2008; Dutton & Ashford, 1993; Dutton, Ashford, O’Neill, & Lawrence, 2001). The existing research tends to focus on the competition between (business) units for
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managerial attention. The main argument set out by the research is that separate business units may have divergent interests and have to compete for the limited managerial attention in order to satisfy these interests in the wider organizational context. While acknowledging this competition perspective on attention, we develop an alternative view which discusses the possibility that functional departmentalization in SMEs may relieve a SME manager’s workload, including certain attention efforts. Organizational design research indicates that the number of departments in a firm usually increases with environmental uncertainty (Daft, 2007). For example, many companies develop research and development (R&D) departments to handle technological change. Similarly, an export department, with its own functionalities, can help monitor and formulate responses to uncertainties emerging in the export environment (Katsikeas, 1994). As such, we argue that the effects of environmental stimuli on the international attention of managers could vary depending on whether an export department is present or not. This is especially the case for SMEs. Typically, small firms are simpleconfigured (Mintzberg, 1979), being low in specialization and formalization but high in centralization, as one individual is responsible for all activities (Burton, Obel, & DeSanctis, 2011). Managers in SMEs tend to expend most of their attention alone, until some functional distribution occurs, for example by bringing together relevant staff and resources into a separate department that operates the firm’s export activities. The establishment of an export department increases the division of labor (i.e., the distribution of tasks) and thus the functional specialization within the firm (Becker & Murphy, 1992). An export department is responsible for gathering information about foreign markets, locating prospective customers, organizing export activities, delivering export sales reports, and managing business relationships in export markets (Katsikea, Theodosiou, Perdikis, & Kehagias, 2011). Managers do not have to stretch their limited attention to oversee the export environment, since the responsibility is delegated to the specific department. To this end, we posit the following: Hypothesis 5a: The presence of an export department will moderate the positive relationship between export competitive intensity and the international attention of SME managers, such that the relationship becomes less positive in the presence of an export department. Hypothesis 5b: The presence of an export department will moderate the positive relationship between export market turbulence and the international attention of SME managers, such that the relationship becomes less positive in the presence of an export department.
Behavioral Strategy and International Attention 157 Goal-Directed Processes Export Diversity
Export Experience
H1
H2
International Attention
H3
H5a
Export Department
H5b
H4
Export Market Turbulence
Export Competitive Intensity
Stimulus-Driven Processes
Figure 6.1 Conceptual framework of international attention.
Figure 6.1 presents the hypotheses of this study. Note that we tested and found that there are no significant moderating effects between variables connected to goal-directed and stimulus-driven processes. METHODS Sample and Data Collection To test the hypotheses, we collected new survey data from SME exporters in the Netherlands. The Netherlands offers a suitable context for this study, given that more than 99% of Dutch firms are classified as SMEs according to the definition of the European Union. The exporting Dutch SMEs offer a relevant research context because they show incentives for internationalization (Hessels, 2005). We employed the Orbis database (Bureau van Dijk, 2014) for our sampling process. To be included in our sample, a firm must: (a) be an SME as defined by the European Union, (b) be engaged in exports—since the export-related features are the main variables of interest, and (c) be independently owned so that the manager’s international attention would not be influenced by a parent firm. We identified 1,574 relevant SME companies
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that met these criteria. From this, we selected a random sample of 750 SME companies and managers to whom we sent our questionnaire. The data were collected via a structured questionnaire mailed to the owner-manager or the managing director of each of the targeted SME companies. Most of the questions and items used in the survey were adapted from previous studies complemented with questions and items relevant for the specific context of our research. Researchers adept at SME surveys were invited to review the initial instrument. A pilot test through in-depth semistructured interviews conducted with five SME managers with different export volumes was performed to ensure the quality of the survey. The final tested questionnaire was translated into Dutch following the usual forwardbackward translation process (Brislin, 1970). Considering that the empirical data derives from a single survey instrument, we took precautions at this stage to control for common method bias. Following the recommendations of Podsakoff, MacKenzie, Lee, and Podsakoff (2003), we used multi-item constructs. The items for each construct were distributed over different sections of the questionnaire. We also collected archival data whenever possible, as an integrated part of the data collection effort, and used this to cross-validate some of the measures. The survey was administered with an initial mailing followed by two reminders. A total of 158 responses were obtained from 716 questionnaires that were delivered successfully. After eliminating incomplete questionnaires, a valid sample of 135 responses was obtained representing an effective response rate of approximately 19%. According to Harzing (1997), this is appropriate for a business mail survey. Measures Dependent Variable We used the modified version of the scale of Bouquet et al. (2009) to measure international attention. International attention was operationalized as a high-order construct, which includes three components: international scanning, overseas communications, and internationalization discussions. The specific items corresponding to each component were adapted to and complemented with additional items tailor-made to our SME research setting. All items included in our measure focus on the practices of individual decision makers rather than top management teams, which are usually absent in SMEs. Respondents were asked to indicate the extent to which they behaved in the manner described for each item on a seven-point Likert scale ranging from 1 (very rarely) to 7 (very frequently). International scanning denotes the environmental surveillance activities through which a manager senses stimuli emerging in the international
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marketplace. Four items were used to measure this component of international attention: (IA1) collect strategic information (on e.g., customers, competitors, price, promotion, distribution, or the general environment) from around the world; (IA2) organize and/or participate in marketing research (e.g., mail surveys or telephone interviews) to analyze international market developments; (IA3) use public information sources (e.g., the Internet, government programs, or publications) to discover international opportunities; and (IA4) routinely compare the company against key competitors worldwide. Items IA1 and IA4 were drawn directly from Bouquet’s original scale. Considering the common tools and assistance used by SMEs in collecting foreign market information (e.g., Hart & Tzokas, 1999; Souchon & Diamantopoulos, 1999), items IA2 and IA3 replacing Bouqet’s item (that is, “the use of business intelligence software to analyze global market development”). Overseas communications are defined here as information exchange between SME managers and their overseas contacts. This is motivated by evidence that SME managers tend to rely on personal contacts to acquire market information (Andersen, 2006). To measure this component, we replaced Bouqet’s items (which concern media richness and meeting rotation adopted by large multinationals) by three new items: (IA5) attend international trade fairs, exhibitions, and so forth; (IA6) visit foreign contacts on a regular basis; and (IA7) involve foreign contacts in key decision making processes. The final item derives from Bouquet’s questionnaire: (IA8) the amount of time spent traveling abroad yearly. It can be expected that managers of international SMEs allocate time to travelling and visiting foreign markets (Andersson & Florén, 2011). Internationalization discussions are in-house talks and meetings in which SME managers share and discuss important information and decisions regarding their firms’ internationalization. While research tends to consider internationalization of SMEs as a random process lacking formal decision making, it has been argued that managers of international SMEs devote more time and effort to formal discussions on internationalization decisions than managers of domestic SMEs do (Andersson & Florén, 2011). We used the following items to measure this component: (IA9) have informal talks with other staff in the firm concerning internationalization decisions; (IA10) make internationalization decisions after a free and open exchange of ideas within the company; (IA11) make internationalization decisions alone (reverse coded); and (IA12) the proportion of total meeting time in a year spent discussing internationalization decisions. All of Bouqet’s items pertaining to this dimension of international attention were retained (i.e., items IA9, IA10, and IA11) but the wording was changed to avoid the focus on top management teams. Item IA12 was new and added following
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the logic that more extensive discussion implies greater international attention (Sonpar & Golden-Biddle, 2008; Tuggle, Schnatterly, & Johnson, 2010). Independent Variables The export experience variable was measured by the total number of years a firm has been involved in exporting (He, Brouthers, & Filatotchev, 2013). The variable export diversity was measured by the total number of countries to which a firm exports (Dhanaraj & Beamish, 2003; He et al., 2013). We used the scales of Cadogan, Paul, Salminen, Puumalainen, and Sundqvist, (2001)—which were adapted from Jaworski and Kohli’s (1993)—to measure export competitive intensity and export market turbulence. For export competitive intensity, we asked the respondents to indicate on a seven-point Likert scale—ranging from 1 (strongly disagree) to 7 (strongly agree)—the extent to which they agreed with the following three items: (CI1) there are many promotion wars in our export markets; (CI2) others can match easily whatever one competitor can offer on the market; and (CI3) price competition is a hallmark of our export markets. Export market turbulence was measured with a similar seven-point Likert scale using the following three items: (MT1) our export customers’ product/service preferences change quite a bit over time; (MT2) new export customers tend to have different product/service needs from those of our existing export customers; and (MT3) we are witnessing changes in the type of products/services demanded by our export customers. Moderator We used a dummy to measure the existence of an export department. A value of 1 was coded if the SME had a separate export department; otherwise a value of 0 was coded. Control Variables We used three sets of control variables in the analysis. The first set of control variables accounts for variations in managerial background. We controlled for manager age and manager education. Both have been identified as indicators of a manager’s tendency to take risks and his or her capability to understand new knowledge (Hitt, Tihanyi, Miller, & Connelly, 2006), and therefore might determine the manager’s international attention. We asked managers to provide their age in years. We measured the manager’s education with a list of Dutch education levels and coded them in the following manner: 1 primary school or below; 2 secondary education; 3 secondary vocational education; 4 higher vocational education; and 5 university education. Research has also shown that a manager’s international
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experience potentially has a significant effect on their ability to effectively attend to international stimuli (e.g., Nummela, Saarenketo, & Puumalainen, 2004). We therefore included a manager’s international experience as a control variable, measured by the number of years that a manager had worked, studied, or lived outside the Netherlands. Firm size has been widely recognized as an indicator of a firm’s resources and capabilities to pursue international opportunities (Dhanaraj & Beamish, 2003), thereby influencing the manager’s international attention. We controlled for this size effect by including the natural logarithm of a firm’s number of employees in the analysis (note that we did not control for firm age because many Dutch SMEs had started exporting since their inception, meaning that including firm age and years of export experience at the same time would risk collinearity). We finally controlled for potential industry-specific effects. We used the two-digit NACE Rev. 2 industry classification (2008) and classified the sample firms into (A) agriculture, forestry, and fishing; (C) manufacturing; (F) construction; (G) wholesale and retail trade; and (H) transportation and storage. Four industry dummies were created (with the wholesale trade sector as the base case in our analysis). Common Method and Non-Response Bias Assessment Since our dependent and explanatory variables were measured with data collected from the same respondent, a risk of common method bias may exist. In addition to the ex ante approaches employed during the questionnaire design, we performed ex post statistical analyses to test for the risks of common method bias (Podsakoff et al., 2003). We first performed a Harman’s single-factor test—loading all of the survey variables into an exploratory factor analysis—and examined whether any single factor would emerge from the analysis. We found a seven-factor solution with the first factor (with an eigenvalue of 5.97) accounting for 24.87% of the variance, and a cumulative variance of 66.88% explained by all seven factors. Alternatively, we conducted a confirmatory factor analysis (CFA) to investigate whether all the survey items were loaded on a common “method” factor. The CFA analysis yielded poor model fit to the data (χ² [252, n = 135] = 759.06, p 0.50). Composite reliability scores ranged from 0.75 to 0.95, higher than the benchmark value of 0.60 recommended by Fornell and Larcker (1981). The values of average variance extracted (AVE) were well above 0.50 in all cases, providing support for convergent validity. Following Bouquet et al. (2009), we compared the three-factor model of international with two alternatives: (a) a one-factor model that incorporates all items into a single factor, and (b) a two-factor model in which the component of internationalization discussions was retained while the other two components (i.e., international scanning and overseas communications) were combined into one. Both the one-factor model (χ2 [35, n = 135] = 68.94, p